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Development of explainable AI-based predictive models for bubbling fluidised bed gasification process

Daya Shankar Pandey, Haider Raza, Saugat Bhattacharyya

2023Fuel30 citationsDOIOpen Access PDF

Abstract

In this study, seven different types of regression-based predictive modelling techniques are used to predict the product gas composition (H2, CO, CO2, CH4) and gas yield (GY) during the gasification of biomass in a fluidised bed reactor. The performance of different regression-based models is compared with the gradient boosting model (GB) to show the relative merits and demerits of the technique. Additionally, SHapley Additive exPlanations (SHAP)-based explainable artificial intelligence (XAI) method was utilised to explain individual predictions. This study demonstrates that the prediction performance of the GB algorithm was the best among other regression-based models i.e. Linear Regression (LR), Multilayer perception (MLP), Ridge Regression (RR), Least-angle regression (LARS), Random Forest (RF) and Bagging (BAG). It was found that at learning rate (lr) 0.01 and number of boosting stages (est) 1000 yielded the best result with an average root mean squared error (RMSE) of 0.0597 for all outputs. The outcome of this study indicates that XAI-based methodology can be used as a viable alternative modelling paradigm in predicting the performance of a fluidised bed gasifier for an informed decision-making process.

Topics & Concepts

Boosting (machine learning)Mean squared errorRegressionRandom forestGradient boostingPredictive modellingStatisticsWood gas generatorLinear regressionRegression analysisMathematicsComputer scienceArtificial intelligenceEngineeringCoalWaste managementThermochemical Biomass Conversion ProcessesIron and Steelmaking ProcessesMineral Processing and Grinding
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