利用机器学习算法预测和优化香榧生物质的质量

IF 5.5 Q1 ENGINEERING, CHEMICAL
Muhammad Hamza Naveed , Jawad Gul , Muhammad Nouman Aslam Khan , Salman Raza Naqvi , Libor Štěpanec , Imtiaz Ali
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引用次数: 0

摘要

香焦生物质是一种重要的绿色能源,可应用于循环经济、解决农业残留物问题和不断增长的能源需求。本研究采用 ML 模型预测耐久性(%)和质量损失(%)。首先,对数据进行收集和预处理,并分析其分布和相关性。然后分别对 80% 和 20% 的数据进行高斯过程回归 (GPR) 和集合学习树 (ELT) 训练和测试。这两种机器学习模型都通过遗传算法(GA)和粒子群优化(PSO)进行了优化,以选择特征和调整超参数。GPR-PSO 在预测耐久性 (%) 方面表现出卓越的准确性,训练 R2 得分为 0.9469,RMSE 值为 0.0785。GPR-GA 在预测质量损失(%)方面表现出色,训练 R2 值为 1,RMSE 值为 9.7373e-05。温度和时间是烘干过程中的关键变量,这与之前研究得出的结论一致。GPR 和 ELT 模型可有效预测和优化烘干生物质的质量,从而提高能量密度、机械性能、研磨性和储存稳定性。此外,它们还通过减少碳排放、提高成本效益以及帮助造粒机的设计和开发,为可持续农业做出了贡献。这种优化不仅提高了能量密度和可磨性,还提高了养分输送效率和保水性,并减少了碳足迹。因此,这些成果支持生物多样性,促进可持续农业、生态系统和环境实践。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Torrefied biomass quality prediction and optimization using machine learning algorithms

Torrefied biomass quality prediction and optimization using machine learning algorithms

Torrefied biomass is a vital green energy source with applications in circular economies, addressing agricultural residue and rising energy demands. In this study, ML models were used to predict durability (%) and mass loss (%). Firstly, data was collected and preprocessed, and its distribution and correlation were analyzed. Gaussian Process Regression (GPR) and Ensemble Learning Trees (ELT) were then trained and tested on 80 % and 20 % of the data, respectively. Both machine learning models underwent optimization through Genetic Algorithm (GA) and Particle Swarm Optimization (PSO) for feature selection and hyperparameter tuning. GPR-PSO demonstrates excellent accuracy in predicting durability (%), achieving a training R2 score of 0.9469 and an RMSE value of 0.0785. GPR-GA exhibits exceptional performance in predicting mass loss (%), achieving a training R2 value of 1 and an RMSE value of 9.7373e-05. The temperature and duration during torrefaction are crucial variables that are in line with the conclusions drawn from previous studies. GPR and ELT models effectively predict and optimize torrefied biomass quality, leading to enhanced energy density, mechanical properties, grindability, and storage stability. Additionally, they contribute to sustainable agriculture by reducing carbon emissions, improving cost-effectiveness, and aiding in the design and development of pelletizers. This optimization not only increases energy density and grindability but also enhances nutrient delivery efficiency, water retention, and reduces the carbon footprint. Consequently, these outcomes support biodiversity and promote sustainable agricultural, ecosystem, and environmental practices.

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来源期刊
Chemical Engineering Journal Advances
Chemical Engineering Journal Advances Engineering-Industrial and Manufacturing Engineering
CiteScore
8.30
自引率
0.00%
发文量
213
审稿时长
26 days
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