Lignocellulosic biomass wastes are abundant resources that are usually valorized for methane-rich biogas via anaerobic digestion. Conversion of lignocellulose into volatile fatty acids (VFA) rather than biogas is attracting attention due to the higher value-added products that come with VFA utilization. This review consolidated the latest studies associated with characteristics of lignocellulosic biomass, the effects of process parameters during acidogenic fermentation, and the intensification strategies to accumulate more VFA. The differences between anaerobic digestion technology and acidogenic fermentation technology were discussed. Performance-enhancing strategies surveyed included (1) alkaline fermentation; (2) co-digestion and high solid-state fermentation; (3) pretreatments; (4) use of high loading rate and short retention time; (5) integration with electrochemical technology, and (6) adoption of membrane bioreactors. The recommended operations include: mesophilic temperature (thermophilic for high loading rate fermentation), C/N ratio (20–40), OLR (< 12 g volatile solids (VS)/(L·d)), and the maximum HRT (8–12 days), alkaline fermentation, membrane technology or electrodialysis recovery. Lastly, perspectives were put into place based on critical analysis on status of acidogenic fermentation of lignocellulosic biomass wastes for VFA production.
Noise
significantly limits the accuracy and stability of retrieving
gas concentration with the traditional direct absorption spectroscopy
(DAS). Here, we developed an adaptively optimized gas analysis model
(AOGAM) composed of a neural sequence filter (NSF) and a neural concentration
retriever (NCR) based on deep learning algorithms for extraction of
methane absorption information from the noisy transmission spectra
and obtaining the corresponding concentrations from the denoised spectra.
The model was trained on two data sets, including a computationally
generated one and the experimental one. We have applied this model
for retrieving methane concentration from its transmission spectra
in the near-infrared (NIR) region. The NSF was implemented through
an encoder–decoder structure enhanced by the attention mechanism,
improving robustness under noisy conditions. Further, the NCR was
employed based on a combination of a principal component analysis
(PCA) layer, which focuses the algorithm on the most significant spectral
components, and a fully connected layer for solving the nonlinear
inversion problem of the determination of methane concentration from
the denoised spectra without manual computation. Evaluation results
show that the proposed NSF outperforms widely used digital filters
as well as the state-of-the-art filtering algorithms, improving the
signal-to-noise ratio by 7.3 dB, and the concentrations determined
with the NCR are more accurate than those determined with the traditional
DAS method. With the AOGAM enhancement, the optimized methane sensor
features precision and stability in real-time measurements and achieves
the minimum detectable column density of 1.40 ppm·m (1σ).
The promising results of the present study demonstrate that the combination
of deep learning and absorption spectroscopy provides a more effective,
accurate, and stable solution for a gas monitoring system.
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