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Computer simulations and modeling studies can provide quicker insights that can be used to build the processes and plants for biomass processing, IIT Madras said. ”Gaining such understanding through hands-on experiments will be time-consuming and expensive and as such, computer simulations and modeling studies can provide quick insights into developing biomass conversion processes,” IIT-M said.
The research was led by assistant professor Dr. Himanshu Goyal and professor Dr. Niket S Kaisare, a press release said.
”With increasing environmental concerns associated with petroleum-derived fuels, biomass is the practical solution not in the conventional sense of directly burning wood, cow dung, and coal, but as a source of energy-dense fuel,” the release said.
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”There is an urgent need to train the next-generation engineers on high-performance computing and machine-learning skills so that they can address some of the biggest challenges before us, such as developing zero-emission technologies to tackle climate change,” Goyal said.
While models used across the globe were to understand the conversion of biomass into fuels and chemicals, most models take a long time to become operational. Artificial intelligence tools such as machine-earning can hasten the modeling processes.
The IIT-M team used the machine-learning method called recurrent neural networks to study the reactions that occur during the conversion of biomass into energy-dense syngas (gasification of biomass), the release said.
”The novelty of our machine-learning approach is that it is able to predict the composition of the biofuel produced as a function of the time the biomass spends in the reactor,” Kaisare said. ”We used a statistical reactor for accurate data generation, which allows the model to be applied over a wide range of operating conditions,” he added.