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Article

Silica Production across Candidate Lignocellulosic Biorefinery Feedstocks

1
Department of Soil & Crop Sciences, Texas A&M University, College Station, TX 77843, USA
2
Texas A&M AgriLife Research Station, Beeville, TX 78102, USA
3
Texas A&M AgriLife Research Station, Stephenville, TX 76401, USA
4
USDA–ARS, Crop Germplasm Research Unit, Southern Plains Agricultural Research Center, College Station, TX 77843, USA
*
Author to whom correspondence should be addressed.
Agronomy 2020, 10(1), 82; https://doi.org/10.3390/agronomy10010082
Submission received: 25 October 2019 / Revised: 24 December 2019 / Accepted: 30 December 2019 / Published: 7 January 2020
(This article belongs to the Section Innovative Cropping Systems)

Abstract

:
Biofuels produced from non-food lignocellulosic feedstocks have the potential to replace a significant percentage of fossil fuels via high yield potential and suitability for cultivation on marginal lands. Commercialization of dedicated lignocellulosic crops into single biofuels, however, is hampered by conversion technology costs and decreasing oil prices. Integrated biorefinery approaches, where value-added chemicals are produced in conjunction with biofuels, offer significant potential towards overcoming this economic disadvantage. In this study, candidate lignocellulosic feedstocks were evaluated for their potential biomass and silica yields. Feedstock entries included pearl millet-napiergrass (“PMN”; Pennisetum glaucum [L.] R. Br. × P. purpureum Schumach.), napiergrass (P. purpureum Schumach.), annual sorghum (Sorghum bicolor [L.] Moench), pearl millet (P. glaucum [L.] R. Br.), perennial sorghum (Sorghum spp.), switchgrass (Panicum virgatum L.), sunn hemp (Crotalaria juncea L.), giant miscanthus (Miscanthus × giganteus J.M. Greef and Deuter), and energy cane (Saccharum spp.). Replicated plots were planted at three locations and characterized for biomass yield, chemical composition including hemicellulose, cellulose, acid detergent lignin (ADL), neutral detergent fiber (NDF), crude protein (CP), and silica concentration. The PMN, napiergrass, energy cane, and sunn hemp had the highest biomass yields. They were superior candidates for ethanol production due to high cellulose and hemicellulose content. They also had high silica yield except for sunn hemp. Silica yield among feedstock entries ranged from 41 to 3249 kg ha−1. Based on high bioethanol and biosilica yield potential, PMN, napiergrass, and energy cane are the most promising biorefinery feedstock candidates for improving biofuel profitability.

1. Introduction

1.1. Integrated Biorefineries

Production of biofuels as a single revenue source remains economically unprofitable [1]. The Environmental Protection Agency’s (EPA) Renewable Fuel Standard (RFS) program, in consultation with U.S. Department of Agriculture and the Department of Energy, mandated a long-term goal to produce 136 billion liters of renewable fuel by 2022. Approximately 61 billion liters of this total was to be produced from cellulosic biofuels [2]. However, the EPA significantly reduced the volume requirement for cellulosic biofuel in 2017 from 21 to only 1.2 billion liters [3].
Biorefinery approaches that diversify output streams by generating both primary biofuels and value-added co-products have potential for increased profitability. Conceptual extensions of lignocellulosic feedstocks from current single biofuel platforms to integrated biorefineries involve separation and utilization of compositional fractions of biomass into primary biofuels (ethanol from cellulose and hemicellulose, for example) and additional bioproducts from the remaining lignin (lignosulfonates, bioplastics, etc.) [4] and mineral (biosilica, etc.) fractions.
Depolymerization of plant biomass results in primary fractions of cellulose, hemicellulose, and lignin. Both cellulose and hemicellulose are polysaccharides, but they differ in their primary components and structures. Cellulose is composed of a linear and unbranched chain of β-(1,4)-linked D-glucose, while hemicellulose can be classified as xylan, xyloglucan, glucuronoxylan, arabinoxylan, or glucomannan based on its branched chain [5,6]. Cellulases, the enzymes necessary to break β-(1,4) bonds, hydrolyze cellulose to glucose. However, a complex enzymatic cocktail is needed to hydrolyze hemicellulose to pentose [6]. Once the monosaccharide is obtained, downstream fermentation produces ethanol. Unlike cellulose and hemicellulose, lignin is a polyphenolic polymer and is often treated as a hindrance for efficient biomass conversion [6]. Most of the lignin is directly combusted for the production of energy during the pulping process, and only small amounts have been utilized for conversion into other chemicals. If different pulp processing methods are used, lignosulfonates can be produced in leu of lignin being directly combusted. The largest volumes of lignosulfonates (50–90%) are utilized as active plasticizing agents in concrete admixture systems as a cost-efficient alternative to synthetic superplasticizers that are derived from fossil fuels [7]. To date, the utilization of lignin either directly for biopower or indirectly by producing lignosulfonates has not proven sufficient towards making biofuel refineries profitable. Investigation of additional, value-added co-products that can be obtained from the residual mineral fraction is therefore warranted.

1.2. Silica

One alternative co-product with potential to increase the profitability of biofuel refining is amorphous silica (SiO2). This material is used in diverse industrial products such as: semiconductors, nanotechnology, reinforcing agents, as a filler, and in specialty chemicals. The majority of silica is produced today through the smelting of quartz at high temperature; however, a relatively energy efficient method of isolating silica has been demonstrated using rice hull ash [8]. This methodology could be incorporated into current dedicated biofuel conversion strategies, in which the residual mineral fraction is not utilized.
Silica within a plant depends on its uptake from the soil in the form of soluble Si(OH)4 or Si(OH)3O. It is ubiquitous across plants, ranging from 0.1 to more than 10% dry weight [9]. Grasses contain among the highest silica concentrations, which varies within different parts of a plant. In rice (Oryza sativa L.), for example, silica content reaches 13% in straw, 23% in hulls, and 35% in nodes [10]. Silica concentrations in perennial grasses such as guineagrass (Panicum maximum Jacq.) (1.07%) and napiergrass (0.85%) are higher than in sugarcane (Saccharum officinarum L.) bagasse (0.44%) [11]. Silica concentration in napiergrass can vary between 0.57% and 4.21%, and higher values are found in the leaves rather than in the stems [12]. Drought stress further induces silica accumulation, resulting in silica concentrations in napiergrass blades and sheaths up to 5% and 3.4%, respectively [13]. High silica-concentration napiergrass ash has been investigated for its use in many applications, including glass manufacturing and clay ceramics [14,15]. The reported median value of silica concentrations in switchgrass samples (1.5%) is higher than that for M. × giganteus (1.08%) [16]. A two-step process to isolate lignin and silica from biomass derived black liquor—a waste product produced in the pulping process that is high in lignin and other extracts—revealed that high silica recovery in the precipitate could be achieved at pH 6–7. Below this pH range, silica was re-dissolved into the solution [17].

1.3. Feedstocks

A large and diverse collection of high-biomass feedstocks was utilized, including six perennial grasses (napiergrass, pearl millet-napiergrass, switchgrass, energycane, miscanthus, and perennial sorghum), two annual grasses (pearl millet and annual sorghum), and one legume (sunn hemp). Napiergrass is a robust perennial forage grass that produces more biomass than most other grasses [18,19], ranging from 8.3 to 27.3 Mg ha−1 y−1 [20,21,22].
Napiergrass (2n = 4x = 28) will hybridize with pearl millet (2n = 2x = 14) to produce interspecific triploid hybrids (2n = 3x = 21). These hybrids combine the forage quality of pearl millet [18], comparatively large seed size and seed yield of annual grasses such as sorghum (Sorghum bicolor [L.] Moench) [20,21,22,23,24], lower establishment costs than energycane and giant miscanthus (Miscanthus × giganteus) [25], biomass yields as high as 37 Mg DM ha−1 y−1 in subtropical climates [26].
Pearl millet (Pennisetum glaucum [L.] R. Br.) is an annual diploid (2n = 2x = 14) grass of African origin [27] utilized worldwide as a grain crop, a forage crop [28], or a high biomass feedstock [29,30].
Switchgrass (Panicum virgatum L.), a perennial grass indigenous to North America, can be utilized as either a forage bioenergy crop [31,32] with wide range of adaptation, genetic diversity, and suitability for marginal lands. The cultivar ‘Alamo’ has higher biomass yield [33], and with N application of at least 150 kg N ha−1 y−1 can achieve 10 to 15 Mg DM ha−1 y−1 [34,35,36].
Giant miscanthus (Miscanthus × giganteus) is a sterile, triploid (2n = 3x = 57), perennial interspecific hybrid between M. sinensis Andersson (2n = 2x = 38) and M. sacchariflorus (Maxim.) Hackel (2n = 2x = 76) [37]. Biomass yields, excluding the two establishment years, range from 22.0 to 35.4 Mg ha−1 y−1 in temperate environments, are significantly lower in subtropical regions [38,39], and are generally higher than switchgrass [40,41].
Energy cane (Saccharum L. spp.) is a perennial bioenergy crop derived from sugarcane, possessing higher fiber concentration, higher biomass yields, and better cold tolerance [42,43,44]. It is productive on marginal lands [45] and has biomass yields comparable to other lignocellulosic feedstocks [46].
Sorghum is used mainly for grain and forage production, but recently it has been evaluated as a bioenergy crop [47]. Chemically induced high-value brown-midrib mutants in sorghum improve forage quality [48], reduce lignin concentration as much as 51% in stems and 25% in leaves [49], and improve overall cellulosic ethanol conversion efficiency [50].
Sunn hemp (Crotalaria juncea L.) is a legume native to India used for soil restoration, green manure, and livestock feed [51,52]. High biomass yields and significant N contributions to subsequent crops make sunn hemp an alternative cover crop in warm temperate regions [53] with potential to replace winter legumes as cover crops [54,55]. It has been demonstrated to produce 10.7 Mg DM ha−1 after 12 weeks of growth which is equivalent to 204 GJ ha−1 energy yield [56].

1.4. Rationale

Direct, side-by-side comparative biomass yield evaluations of lignocellulosic feedstocks are limited. Those available are further lacking in both data across multiple adaptation regions as well as biofuel: co-product yields. As a result, extrapolation of feedstock performance towards specific biofuel conversion strategies that also include value-added bioproducts from inorganic, mineral fraction remains difficult. The objective of this study was therefore to evaluate nine diverse biomass crops across multiple ecoregions for biomass yield, forage composition, and both silica content and yield. This would provide the first report for Si content and yield among diverse candidate biofuel feedstocks across temperate ecoregions.

2. Materials and Methods

2.1. Plant Entries

Twelve feedstocks, including seven grass species and one legume species, were evaluated (Table 1).

2.2. Field Evaluation

2.2.1. Propagation of Plant Materials and Planting

Culms of the napiergrass (PEPU 09FL01, PEPU 09FL03, Merkeron) and energy cane entries were harvested in October 2015 from field plots at College Station, TX. Single nodes were cut from the stalks and planted into a soil mixture in 95 L barrels inside a greenhouse to grow for propagation into trays in spring 2016. Rhizomes of PSH 09TX15 perennial sorghum and giant miscanthus were collected at the same time and similarly increased. In April 2016, individual plants of napiergrass, energy cane, perennial sorghum, and giant miscanthus lines were removed from the barrels and transplanted into a commercial soil mix in propagation trays and allowed to acclimate outside for 4 wk. Single switchgrass and PMN seed were seeded directly into propagation trays, established for 8 wk, and allowed to acclimate outside for 4 wk.
In May 2016, replicated plots (n = 3) were planted in a completely randomized design at College Station, Beeville, and Stephenville, TX. The College Station location (30°32′ N, 96°26′ W; elevation 81m) was on a Weswood silty clay loam (pH 8.0). The Beeville location (28°27′ N, 97°42′ W; elevation 70 m) was on a Parrita sandy clay loam (pH 7.2). The Stephenville location (34°17′ N, 96°12′ W; elevation 370 m) was on a Windthorst fine sandy loam (pH 6.8). Each cultivar was planted in three plots (3 × 3 m) with four, 3-m rows at 0.75 m between plants within a row. Propagated entries (1, 2, 3, 4, 8, 9, 11, and 12) were planted vegetatively with seven plants in each row. At Beeville and College Station, entries 1 and 9 had been planted for a previous experiment in 2014. Entries 5, 6, 7, and 10 were planted by seed at 2.5 cm spacing within rows using a Jang JP-1 roller-type seeder. For the 2017 growing season, vegetatively propagated entries were regrown from 2016 field plots in each three location. Entries 5, 6, 7, and 10 were again planted in 2016 using a Jang JP-1 roller-type seeder. Weed control was conducted by hand and mechanical cultivation. A single fertilizer application of 80 kg N per hectare (urea) was applied 3 wk post planting on all grass plots in both growing seasons. Total water inputs (precipitation and irrigation) varied across trial sites and were adequate for high biomass yield potential (Figure 1).

2.2.2. Harvesting and Estimation of Biomass Yield

Field harvests were made in November 2016 and 2017. One of the two center rows of each plot was harvested, and the wet weight was measured. A subsample was obtained from each plot, weighed, air dried, and reweighed to determine moisture content and biomass yield. The air-dried subsamples were first ground with a hammer mill and then ground with a Wiley mill (Thomas Scientific, Philadelphia, PA, USA) through a 1-mm sieve for chemical composition and bio-silica analyses.

2.2.3. Chemical Composition (NDF, ADF, ADL, CP, Cellulose, Hemicellulose)

Neutral detergent fiber (NDF), acid detergent fiber (ADF), and acid detergent lignin (ADL) were determined using the methodology described by Van Soest and Robertson [57], modified by using an Ankom 200 Fiber Analyzer (Ankom Technologies, Macedon, NY, USA). Acid detergent lignin is the residue remaining after sequential digestion of ADF residue with 72% sulfuric acid [58]. Nitrogen (N) was determined using an elemental analyzer (Vario Macro, Elementar, Germany) and crude protein (CP), cellulose, and hemicellulose were calculated (CP = N, % DM basis × 6.25) (Cellulose = ADF − ADL) (Hemicellulose = NDF − ADF).

2.2.4. Silica Analysis

Silica was measured according to Reidinger et al. [59] using a portable X-ray fluorescence spectrometer (DELTA Premium, OLYMPUS, Tokyo, Japan). This method requires relatively small amounts of plant material and is an accurate and rapid technique for detecting silica content in plant tissue [59]. To test the accuracy of this methodology, silica calibration standards were made by first mixing methyl cellulose and silica powder and then homogenizing them to produce standards with 0%, 0.5%, 1%, 2%, 3%, 4%, 5%, 6%, 7%, 8%, 9%, and 10% silica concentration. Pellets of both the silica calibration standards and the dried, ground plant samples were made by pressing 1.0 g of each sample into a 2 cm die with 12 Mg pressure using a manual hydraulic press. The pellets were subsequently analyzed for silica content using the X-ray fluorescence spectrometer.

2.3. Data Analysis and Statistics

The experimental units for data analysis were individual plots. The statistical model consisted of location, year, and plant entry in a three-factorial arrangement looking at three-way interactions and, if those were not significant, at simple effects. Data were submitted to analysis of variance and when significant separated using All Pair, Tukey HSD with JMP software (JMP Pro12.1, Statistical Analysis System, Raleigh, NC, USA). Differences were considered significant at p ≤ 0.05.

3. Results

3.1. Summary Statistics

There were differences among locations for all traits evaluated (Table 2). Year and feedstock entry effects varied. Interactions between location and year occurred for every trait. Location by feedstock entries interacted across all traits except for ADL. Year by feedstock entries interacted across all traits except for hemicellulose. Three-way interaction between location, year, and feedstock entries were nonsignificant.

3.2. Year 1: Biomass Yield and Chemical Composition

At Stephenville, energy cane had the highest yield but was closely followed by PMN, all three napiergrass entries, both annual sorghum entries, and sunn hemp (Table 3). Giant miscanthus and pearl millet had the lowest yields. Despite being in its third season from a previous experiment, switchgrass yields were lower. At College Station, third season PMN had the highest yield (Table 4). Two napiergrass entries (Merkeron, PEPU 09FL03), energy cane, and sunn hemp had intermediate yields at this location (Table 4). All remaining entries, including third season switchgrass, had lower yields. The third season PMN entry at Beeville had the highest yield for the first harvest (Table 5), and part of the reason for this high yield was these plants were established two years earlier for another experiment. There were no significant differences among the remaining entries at Beeville (Table 5). Of the 11 remaining entries, all three napiergrass entries, the giant miscanthus entry, the energy cane entry, and one sorghum accession were the most productive (Table 5), The sunn hemp entry was heavily defoliated by rabbits, and insufficient forage was available to determine forage production yield.
Giant miscanthus had the highest hemicellulose concentration at College Station and Beeville (Table 4 and Table 5), while at Stephenville pearl millet had the highest hemicellulose concentration (Table 3). At all locations, sunn hemp had the lowest hemicellulose concentration. Sunn hemp had the highest cellulose concentration at Stephenville and College Station. Across most remaining entries, cellulose concentration was highly uniform at all locations. Sunn hemp had the highest ADL at all locations. Two napiergrass entries (PEPU 09FL01, PEPU 09FL03) and PMN were statistically equivalent to sunn hemp for ADL at Beeville. The BMR sorghum had the lowest ADL at College Station and Beeville, while BMR pearl millet had the lowest ADL at Stephenville. The perennial sorghum entry had the highest NDF at Stephenville and Beeville, while the NDF of the non-BMR sorghum was the highest at College Station. The NDF of pearl millet was the lowest at Stephenville and College Station; however, BMR sorghum had the lowest NDF at Beeville. Crude protein in sunn hemp was higher than the other feedstock entries across all locations. Across all locations, BMR sorghum had the highest silica concentration, while sunn hemp was the lowest in silica concentration. However, the silica yield (kg ha−1) of the BMR sorghum tended to range from intermediate to low at all locations, and the silica yield of perennial sorghum and switchgrass was equivalent to the BMR sorghum. The silica yield of the third year PMN was the highest at College Station and Beeville. At Stephenville, even during its first year, the PMN possessed the highest silica yield but similar yield to one napiergrass accession (PEPU 09FL03) and the energy cane.

3.3. Year 2: Biomass Yield and Chemical Composition

The second-year biomass production was greater than that of the first-year yields for all perennial feedstocks except for PMN at all locations and PSH 09TX15 at Beeville (Table 6, Table 7 and Table 8). At Stephenville, the PMN dry matter yield decreased the most from year one to year two. This occurred because the PMN did not overwinter well in Stephenville and there were fewer PMN plants in the plot the second year. Even with reduced yields, PMN 10TX13 had the highest biomass yield at Beeville and College Station, but at both locations no significant differences were found for biomass yield among the PMN, energy cane, or napiergrass entries. Except for PMN 10TX13, Stephenville had similar results for the top producers.
Hemicellulose concentration was relatively uniform across all entries at each location; however, statistically significant differences occurred among the entries (Table 6, Table 7 and Table 8). Hemicellulose content of sunn hemp was significantly lower than all other entries (Table 6 and Table 8). Cellulose concentrations were also mostly uniform in year two. The largest range occurred at Beeville, with BMR sorghum having the lowest concentration (341 g kg−1) and sunn hemp having the highest concentration (477 g kg−1). All other second year cellulose concentrations at all locations occurred within this range. BMR sorghum had the lowest ADL at all three locations, sunn hemp again produced the highest ADL. At Beeville, NDF was essentially equivalent for all entries except for BMR sorghum which was significantly lower than the others (Table 8). At Stephenville, BMR sorghum was also the lowest with Alamo switchgrass having the highest NDF (Table 6). At College Station, energy cane had the lowest NDF while the non-BMR annual sorghum SX-17 had the highest (Table 7). As in year one, sunn hemp had the highest crude protein percentage across all locations (Table 6, Table 7 and Table 8). Sunn hemp had the lowest silica concentrations as well as silica yields in year two. Also, as in year one for silica yield, biomass yield was more important than differences in silica content. The highest silica yields at each location were the same as the largest biomass yield at each location: PMN 10TX13 at College Station and Beeville, and Merkeron napiergrass at Stephenville (Table 6, Table 7 and Table 8).

4. Discussion

Integrated biorefineries have diverse designs. One strategy utilizing biomass fractionation could produce ethanol from cellulose and hemicellulose, biopower from lignin, and silica from the remaining mineral fraction (Figure 2). Also, there could be the possibility of recovering other soluble products (crude protein) from the initial liquid fraction.
Selection of feedstocks to maximize the yield of both biofuels and co-products is critical for the economic viability of integrated biorefineries. With cellulosic ethanol currently not economically competitive compared to fuel ethanol from sugar- and starch-based feedstocks [60,61,62], isolation of biosilica from the inorganic mineral fraction offers potential to provide additional revenue to biorefineries.
Biomass yield and forage quality was similar for several feedstocks in this study (napiergrass, PMN, and switchgrass) to previously published reports [20,21,22,26,34,35,36]. Our data for such across the other included feedstocks represent novel, baseline data for their performance across equivalent ecoregions. All of the Si content and yield data reported herein are novel across the feedstocks and adaptation zones. The two reports of XRF-based Si estimation in napiergrass [11,63] have ranged from somewhat lower to somewhat higher than those in this study; however, they were both performed in tropical regions and would not provide relevant yield estimates for subtropical and temperate regions. The single report of XRF-based Si content in switchgrass [64], was based only on bulk biomass samples of unknown origin and without the associated biomass yields.
In this study, summary rankings of the feedstocks were based on their overall suitability for utilization in the above proposed integrated biorefinery by four criteria: (1) increased overall biomass yield, (2) increased cellulose and hemicellulose contents, (3) reduced lignin content, and (4) increased silica content (Table 9). While recognizing that many considerations (costs for feedstock, pretreatment, saccharification, fermentation, ethanol recovery, etc.) are used when selecting a feedstock, our results show that the most promising feedstocks for an integrated biorefinery that captures value from both the lignocellulosic biomass and mineral fractions within ecoregions equivalent to the three in this study are PMN, napiergrass, and energy cane. Even though the biomass yields in this study for napiergrass, PMN, and switchgrass were similar to previous reports [20,21,22,26,34,35,36], additional larger scale trials would be warranted for all included feedstocks in all targeted production regions prior to commercialization. More extensive Si sampling of both raw biomass and post pre-treatment residues would also be beneficial.
PMN, napiergrass, and energy cane consistently had higher biomass yields across all locations. The yield results were not surprising, although as miscanthus typically takes two years to establish, it is expected that miscanthus could achieve higher yields in subsequent years. Whether miscanthus in later years would yield as high as the three grasses listed above is unknown. Sunn hemp had roughly equivalent biomass yields as the grass entries; however, due to its low silica yield, it would not be an ideal feedstock for the proposed biorefinery. The highest biosilica yields were also recovered from PMN, napiergrass, and energy cane. Silica percentages were higher than previously reported mean or median concentrations, there is likely a substantial environmental effect at the test locations as silica concentrations trended higher across entries (except sunn hemp).
Energy cane and napiergrass must be propagated vegetatively and thus have higher establishment costs. Napiergrass is also considered an invasive species in some areas (Florida). PMN hybrids in contrast have lower establishment costs via direct seeding, as well as having no seed: weed invasiveness potential as a sterile triploid crop. These considerations, along with the biomass and silica data, indicate PMN is a strong candidate feedstock for integrated biorefineries. Additional evaluations are needed to determine its adaptability for other regions and environments. In this study, however, PMN hybrids consistently yielded greater than 1000 kg/ha of silica in College Station and Beeville (years 1 and 2) as well as in Stephenville in year 1. With market prices for amorphous silica at USD 800 per ton [65], PMN has significant potential towards integrated biofuel: silica biorefinery strategies and replacement of fume silica with renewable biosilica. Global silica markets currently have a 9% annual growth rate and will surpass USD 9 billion in the near future [66], further indicating economic opportunities for biosilica.

Author Contributions

Conceptualization, Y.X., B.L.B., and R.W.J.; methodology, Y.X., J.L.F., J.P.M., P.S., and R.W.J.; formal analysis, Y.X.; writing—original draft preparation, Y.X., N.P.; writing—review and editing, Y.X., N.P., J.L.F., J.P.M., P.S., B.L.B., and R.W.J.; supervision, R.W.J.; project administration, Y.X.; funding acquisition, R.W.J. All authors have read and agreed to the published version of the manuscript.

Funding

This research received no external funding.

Conflicts of Interest

The authors declare no conflicts of interest.

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Figure 1. Total cumulative irrigation and precipitation inputs (mm) at trial sites in College Station, Stephenville, and Beeville, TX in 2016 and 2017.
Figure 1. Total cumulative irrigation and precipitation inputs (mm) at trial sites in College Station, Stephenville, and Beeville, TX in 2016 and 2017.
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Figure 2. Illustration of conceptual integrated biorefinery producing ethanol, biopower, and silica.
Figure 2. Illustration of conceptual integrated biorefinery producing ethanol, biopower, and silica.
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Table 1. Feedstocks utilized for field trials.
Table 1. Feedstocks utilized for field trials.
EntrySpeciesIdentificationLife CycleFamily
1Pearl Millet-Napiergrass (PMN)PMN10TX13PerennialPoaceae
2NapiergrassMerkeronPerennialPoaceae
3NapiergrassPEPU 09FL03PerennialPoaceae
4NapiergrassPEPU 09FL01PerennialPoaceae
5BMR sorghumSDH2942AnnualPoaceae
6Annual sorghumSX-17AnnualPoaceae
7BMR Pearl milletExceedAnnualPoaceae
8Perennial sorghumPSH 09TX15PerennialPoaceae
9SwitchgrassAlamoPerennialPoaceae
10Sunn hempTropical IsleAnnualFabaceae
11Giant miscanthus(Mxg)PerennialPoaceae
12Energy cane(unknown accession)PerennialPoaceae
Table 2. Analysis of variance of biomass yield, hemicellulose, cellulose, acid detergent lignin (ADL), neutral detergent fiber (NDF), crude protein (CP), and silica concentration.
Table 2. Analysis of variance of biomass yield, hemicellulose, cellulose, acid detergent lignin (ADL), neutral detergent fiber (NDF), crude protein (CP), and silica concentration.
BiomassNDFHemicelluloseCelluloseADLCPSilica
location (loc)* Z******************
year**********ns******
treatment (trt)*********************
loc * year*********************
loc * trt**********ns**
year * trt******ns********
loc * year * trtnsnsnsnsnsnsns
Z ns (nonsignificant) or significant at p ≤ 0.05 (*), 0.01 (**), or 0.001 (***).
Table 3. First year Stephenville sample traits of biomass yield (kg ha−1) and chemical composition including hemicellulose, cellulose, acid detergent lignin (ADL), neutral detergent fiber (NDF) (g kg−1 biomass), crude protein (CP) (%), silica (%), and silica yield (kg ha−1).
Table 3. First year Stephenville sample traits of biomass yield (kg ha−1) and chemical composition including hemicellulose, cellulose, acid detergent lignin (ADL), neutral detergent fiber (NDF) (g kg−1 biomass), crude protein (CP) (%), silica (%), and silica yield (kg ha−1).
Means
EntryBiomassHemicelluloseCelluloseADLNDFCPSilicaSilica Yield
kg ha−1 g kg−1 % kg ha−1
(1) PMN 10TX13 Y30,975 ab Z247 c404 bc64.2 abc716 abcd4.06 bcd4.11 ab1281 a
(2) Merkeron X 23,589 abc245 c398 bc68.9 abc712 abcd3.44 bcd2.68 c631 abc
(3) PEPU 09FL03 W32,469 ab261 bc378 bcde71.5 abc711 bcd3.06 cd3.58 bc1264 ab
(4) PEPU 09FL01 W17,955 abc245 c402 bc87.4 ab734 abc2.69 d3.48 bc627 abc
(5) BMR Sorghum V8746 abc278 abc314 e70.3 abc662 cd4.44 abcd5.36 a468 abc
(6) SX-17 U16,912 abc260 abc387 bcd67.4 abc715 abcd2.63 d3.54 bc577 abc
(7) BMR pearl millet T7804 c306 a333 de29.4 c668 d5 ab2.73 c212 c
(8) PSH 09TX15 S10,872 bc289 ab413 b65.1 abc767 a2.5 d4.91 a542 abc
(9) Alamo switchgrass11,717 bc297 ab369 bcde64.7 abc730 abc3.31 bcd2.98 c350 bc
(10) Tropical Isle Sunn Hemp31,774 ab144 d507 a98.5 a749 ab6.56 a0.4 d144 bc
(11) Giant miscanthus (Mxg) 4453 c285 abc356 cde64.9 abc705 bcd4.75 abc4.42 ab198 c
(12) Energy cane R33,044 a260 bc371 bcde50.1 bc681 cd3.38 bcd3.04 c1008 abc
Z Means within a column under each main factor followed by the same letter (a,b,c,d,e) are not significantly different according to All Pairs Grouping, Tukey HSD. Y Pearl millet napiergrass hybrid PMN 10TX13. X Napiergrass accession. W Annual sorghum (BMR) cultivar. V Annual sorghum SX-17 cultivar. U Perennial sorghum hybrid PSH 09TX15. T Exceed BMR pearl millet. S Perennial sorghum hybrid PSH 09TX15. R Energy cane unknown accession.
Table 4. First year College Station sample traits of biomass yield (kg ha−1) and chemical composition including hemicellulose, cellulose, acid detergent lignin (ADL), neutral detergent fiber (NDF) (g kg−1 biomass), crude protein (CP) (%), silica (%), and silica yield (kg ha−1).
Table 4. First year College Station sample traits of biomass yield (kg ha−1) and chemical composition including hemicellulose, cellulose, acid detergent lignin (ADL), neutral detergent fiber (NDF) (g kg−1 biomass), crude protein (CP) (%), silica (%), and silica yield (kg ha−1).
Means
EntryBiomassHemicelluloseCelluloseADLNDFCPSilicaSilica Yield
kg ha−1g kg−1%kg ha−1
(1) PMN 10TX13 Y71,318 a Z216 b401 bcd97.2 ab714 ab2.25 d4.2 bcd3249 a
(2) Merkeron X16,442 bc241 ab417 bc67.5 cdef726 ab3.31 bcd3.85 bcd645 b
(3) PEPU 09FL03 W9461 bc235 ab374 cd90.7 abc700 ab2.6 bcd3.62 bcd311 b
(4) PEPU 09FL01 W6000 c258 ab375 cd69.6 cdef702 ab3.15 bcd4.22 bcd247 b
(5) BMR Sorghum V3338 c255 ab416 bc35.5 g706 ab3.25 bcd6.74 a238 b
(6) SX-17 U4316 c241 ab438 b70.4 cdef749 a2.41 cd3.98 bcd175 b
(7) BMR pearl millet T1567 c276 a358 d46.4 efg680 b4.51 abc3.53 cd53 b
(8) PSH 09TX15 S3961 c243 ab428 b71.5 cde742 ab3.07 bcd5.21 ab200 b
(9) Alamo switchgrass6015 c289 a372 cd77.6 bcd738 ab2.64 bcd2.93 d178 b
(10) Tropical Isle Sunn Hemp25,820 b120 c505 a105 a730 ab5.48 a0.49 e90 b
(11) Giant miscanthus (Mxg) 2328 c289 a361 d56.8 defg707 ab4.69 ab4.61 bc106 b
(12) Energy cane R13,704 bc266 ab376 cd45 fg687 ab3.21 bcd3.77 bcd518 b
Z Means within a column under each main factor followed by the same letter (a,b,c,d,e,f,g) are not significantly different according to All Pairs Grouping, Tukey HSD. Y Pearl millet napiergrass hybrid PMN 10TX13. X Napiergrass accession. W Annual sorghum (BMR) cultivar. V Annual sorghum SX-17 cultivar. U Perennial sorghum hybrid PSH 09TX15. T Exceed BMR pearl millet. S Perennial sorghum hybrid PSH 09TX15. R Energy cane unknown accession.
Table 5. First year Beeville sample traits of biomass yield (kg ha−1) and chemical composition including hemicellulose, cellulose, acid detergent lignin (ADL), neutral detergent fiber (NDF) (g kg−1 biomass), crude protein (CP) (%), silica (%), and silica yield (kg ha−1).
Table 5. First year Beeville sample traits of biomass yield (kg ha−1) and chemical composition including hemicellulose, cellulose, acid detergent lignin (ADL), neutral detergent fiber (NDF) (g kg−1 biomass), crude protein (CP) (%), silica (%), and silica yield (kg ha−1).
Means
EntryBiomassHemicelluloseCelluloseADLNDFCPSilicaSilica Yield
kg ha−1 g kg−1 % kg ha−1
(1) PMN 10TX13 Y69,519 Za Z232 d422 a74.9 abc728 ab5.86 b3.11 de2211 a
(2) Merkeron X18,955 b255 abcd414 ab65.2 bcd734 ab3.82 bcd4.38 abcd825 b
(3) PEPU09FL03 W15,635 b250 abcd388 abcd90.9 ab729 ab3.35 cd4.15 bcd639 b
(4) PEPU09FL01 W12,803 b244 bcd414 ab99.6 a758 a3.1 cd3.86 cd494 b
(5) BMR Sorghum V6678 b240 cd367 bcd40.5 d648 c3.92 bcd6.05 a412 b
(6) SX-17 U13,260 b239 cd400 abc62.7 bcd701 b3.32 cd3.65 de473 b
(7) BMR pearl millet T919 b278 abc380 abcd46.5 cd705 abc4.94 bcd4.4 abcd41 b
(8) PSH 09TX15 S9961 b265 abcd433 a61.8 bcd760 a2.6 d5.58 abc559 b
(9) Alamo switchgrass6137 b282 ab359 cd62.5 bcd704 b3.53 bcd2.97 de181 b
(10) Tropical Isle Sunn Hemp - 115 e439 ab111 a665 bc10.3 a1.03 e-
(11) Giant miscanthus (Mxg) 1624 b289 a348 d52.9 cd690 bc5.34 bc5.83 ab100 b
(12) Energy cane R14,239 b266 abcd383 abcd57.2 cd706 b4.26 bcd4.3 abcd613 b
Z Means within a column under each main factor followed by the same letter (a,b,c,d) are not significantly different according to All Pairs Grouping, Tukey HSD. Y Pearl millet napiergrass hybrid PMN 10TX13. X Napiergrass accession. W Annual sorghum (BMR) cultivar. V Annual sorghum SX-17 cultivar. U Perennial sorghum hybrid PSH 09TX15. T Exceed BMR pearl millet. S Perennial sorghum hybrid PSH 09TX15. R Energy cane unknown accession.
Table 6. Second year Stephenville sample traits of biomass yield (kg ha−1) and chemical composition including hemicellulose, cellulose, acid detergent lignin (ADL), neutral detergent fiber (NDF) (g kg−1 biomass), crude protein (CP) (%), silica (%), and silica yield (kg ha−1).
Table 6. Second year Stephenville sample traits of biomass yield (kg ha−1) and chemical composition including hemicellulose, cellulose, acid detergent lignin (ADL), neutral detergent fiber (NDF) (g kg−1 biomass), crude protein (CP) (%), silica (%), and silica yield (kg ha−1).
Means
EntryBiomassHemicelluloseCelluloseADLNDFCPSilicaSilica Yield
kg ha−1 g kg−1 % kg ha−1
(1) PMN 10TX13 Y17,226 cd Z270 abc392 abc66 abcd729 bcd2.9 bc3.73 a695 bcd
(2) Merkeron X60,950 a243 c412 abc77 abcd732 abcd2.96 bc2.48 a1486 a
(3) PEPU 09FL03 W55,315 a242 c366 c105 a713 cde2.08 cd2.89 a1338 ab
(4) PEPU 09FL01 W30,831 bc240 c437 a89 abc766 abcd1.45 d3.19 a867 abcd
(5) BMR Sorghum V8175 d269 abc359 c27 d654 e3.01 bc4.94 a405 d
(6) SX-17 U6006 d262 bc393 abc49 cd704 de1.86 cd3.6 a213 d
(7) BMR pearl millet T5144 d294 ab360 c63 abcd717 bcde3.62 b3.7 a183 d
(8) PSH 09TX15 S12,987 d291 ab432 ab63 abcd785 ab2.44 bcd5.05 a639 cd
(9) Alamo switchgrass15,905 cd307 a420 abc77 abcd804 a2 cd2.59 a442 d
(10) Tropical Isle Sunn Hemp10,636 cd145 d438 abc126 ab709 abcde7.71 a
(11) Giant miscanthus (Mxg) 10,900 d294 ab414 abc71 abcd779 abc1.7 cd4.17 a461 cd
(12) Energy cane R44,015 ab278 abc368 bc51 bcd697 de2.6 bcd2.79 a1144 abc
Z Means within a column under each main factor followed by the same letter (a,b,c,d) are not significantly different according to All Pairs Grouping, Tukey HSD. Y Pearl millet napiergrass hybrid PMN 10TX13. X Napiergrass accession. W Annual sorghum (BMR) cultivar. V Annual sorghum SX-17 cultivar. U Perennial sorghum hybrid PSH 09TX15. T Exceed BMR pearl millet. S Perennial sorghum hybrid PSH 09TX15. R Energy cane unknown accession.
Table 7. Second year College Station sample traits of biomass yield (kg ha−1) and chemical composition including hemicellulose, cellulose, acid detergent lignin (ADL), neutral detergent fiber (NDF) (g kg−1 biomass), crude protein (CP) (%), silica (%), and silica yield (kg ha−1).
Table 7. Second year College Station sample traits of biomass yield (kg ha−1) and chemical composition including hemicellulose, cellulose, acid detergent lignin (ADL), neutral detergent fiber (NDF) (g kg−1 biomass), crude protein (CP) (%), silica (%), and silica yield (kg ha−1).
Means
EntryBiomass HemicelluloseCelluloseADLNDFCPSilicaSilica Yield
kg ha−1g kg−1%kg ha−1
(1) PMN 10TX13 Y62,912 a Z202 c424 abcd88 ab714 ab2.21 ab2.83 cd1893 a
(2) Merkeron X61,525 a224 bc430 abc97 a750 ab2.65 ab2.49 cd1552 ab
(3) PEPU 09FL03 W49,086 ab225 abc416 abcd97 a738 ab1.82 ab2.16 cd1048 abc
(4) PEPU 09FL01 W37,306 abc243 abc418 abcd101 a762 a1.97 ab2.52 cd917 abc
(5) BMR Sorghum V8238 c269 ab410 bcd51 c730 ab1.94 ab4.7 ab405 bc
(6) SX-17 U5330 c271 ab458 a78 abc808 a1.4 b3.09 bcd169 c
(7) BMR pearl millet T7465 c275 ab404 cd63 bc742 ab2.92 a3 bcd212 c
(8) PSH 09TX15 S6715 c273 ab449 ab71 abc792 a2.17 ab4.86 a334 bc
(9) Alamo switchgrass14,613 c287 a421 abcd83 abc791 a2.29 ab2.01 cd284 bc
(11) Giant miscanthus (Mxg) 16,922 bc279 ab419 abcd69 abc767 a1.87 ab3.55 abc610 abc
(12) Energy cane R54,816 a230 abc380 d56 bc665 b1.99 ab1.4 d778 abc
Z Means within a column under each main factor followed by the same letter (a,b,c,d) are not significantly different according to All Pairs Grouping, Tukey HSD. Y Pearl millet napiergrass hybrid PMN 10TX13. X Napiergrass accession. W Annual sorghum (BMR) cultivar. V Annual sorghum SX-17 cultivar. U Perennial sorghum hybrid PSH 09TX15. T Exceed BMR pearl millet. S Perennial sorghum hybrid PSH 09TX15. R Energy cane unknown accession.
Table 8. Second year Beeville sample traits of biomass yield (kg ha−1) and chemical composition including hemicellulose, cellulose, acid detergent lignin (ADL), neutral detergent fiber (NDF) (g kg−1 biomass), crude protein (CP) (%), silica (%), and silica yield (kg ha−1).
Table 8. Second year Beeville sample traits of biomass yield (kg ha−1) and chemical composition including hemicellulose, cellulose, acid detergent lignin (ADL), neutral detergent fiber (NDF) (g kg−1 biomass), crude protein (CP) (%), silica (%), and silica yield (kg ha−1).
Means
EntryBiomassHemicelluloseCelluloseADLNDFCPSilicaSilica Yield
kg ha−1 g kg−1 % kg ha−1
(1) PMN 10TX13 Y40,098 a Z261 bc392 bc51 bc704 a4.48 ab3.88 ab1562 a
(2) Merkeron X39,783 a257 bc395 bc63 b715 a3.42 b3.45 ab1410 ab
(3) PEPU 09FL03 W34,867 ab255 bc365 bc71 ab691 a4.26 ab4.15 ab1373 ab
(4) PEPU 09FL01 W30,298 abc247 c416 b82 ab745 a3.43 b2.67 bc855 abc
(5) BMR Sorghum V10,005 abc263 bc341 c22 c626 b4.35 ab6.08 a608 abc
(6) SX-17 U6345 bc278 abc375 bc56 bc708 a3.4 b5.54 a353 abc
(7) BMR pearl millet T3431 c295 abc394 bc56 bc745 a3.8 b4.93 ab177 bc
(8) PSH 09TX15 S5841 bc288 abc381 bc51 bc720 a4.78 ab5.63 a338 abc
(9) Alamo switchgrass11,543 abc299 ab366 bc56 bc721 a3.7 b3.7 ab430 abc
(10) Tropical Isle Sunn Hemp3401 c141 d477 a105 a723 a6.99 a0.49 c18 c
(11) Giant miscanthus (Mxg) 7068 bc316 a350 c46 bc712 a4.2 ab6.13 a432 abc
(12) Energy cane R34,214 abc273 abc382 bc47 bc702 a3.41 b3.61 ab1229 abc
Z Means within a column under each main factor followed by the same letter (a,b,c) are not significantly different according to All Pairs Grouping, Tukey HSD. Y Pearl millet napiergrass hybrid PMN 10TX13. X Napiergrass accession. W Annual sorghum (BMR) cultivar. V Annual sorghum SX-17 cultivar. U Perennial sorghum hybrid PSH 09TX15. T Exceed BMR pearl millet. S Perennial sorghum hybrid PSH 09TX15. R Energy cane unknown accession.
Table 9. Summary ranking of potential biorefinery (bioethanol, biopower, biosilica) across twelve candidate feedstocks based on biomass (highest cellulose and hemicellulose, lowest ADL) and silica yields (kg ha−1).
Table 9. Summary ranking of potential biorefinery (bioethanol, biopower, biosilica) across twelve candidate feedstocks based on biomass (highest cellulose and hemicellulose, lowest ADL) and silica yields (kg ha−1).
Entry First Year Second Year
College StationStephenvilleBeevilleCollege StationStephenville Beeville
(1) PMN 10TX13111151
(2) Merkeron241212
(3) PEPU 09FL03434425
(4) PEPU 09FL01557546
(5) BMR sorghum6108794
(6) SX-17105611109
(7) BMR pearl millet121111101111
(8) PSH 09TX15975969
(9) Alamo switchgrass689877
(10) Tropical Isle Sunn Hemp68 12
(11) Giant miscanthus (Mxg)111210687
(12) Energy cane323323

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Xu, Y.; Porter, N.; Foster, J.L.; Muir, J.P.; Schwab, P.; Burson, B.L.; Jessup, R.W. Silica Production across Candidate Lignocellulosic Biorefinery Feedstocks. Agronomy 2020, 10, 82. https://doi.org/10.3390/agronomy10010082

AMA Style

Xu Y, Porter N, Foster JL, Muir JP, Schwab P, Burson BL, Jessup RW. Silica Production across Candidate Lignocellulosic Biorefinery Feedstocks. Agronomy. 2020; 10(1):82. https://doi.org/10.3390/agronomy10010082

Chicago/Turabian Style

Xu, Yifeng, Nick Porter, Jamie L. Foster, James P. Muir, Paul Schwab, Byron L. Burson, and Russell W. Jessup. 2020. "Silica Production across Candidate Lignocellulosic Biorefinery Feedstocks" Agronomy 10, no. 1: 82. https://doi.org/10.3390/agronomy10010082

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