探索使用微藻生物柴油和柴油混合燃料的双燃料 CI 发动机的性能和排放特性:使用 ANN 和响应面方法的机器学习方法

IF 4.7 3区 环境科学与生态学 Q2 ENVIRONMENTAL SCIENCES Environment, Development and Sustainability Pub Date : 2024-09-03 DOI:10.1007/s10668-024-05362-2
Chandrabhushan Tiwari, Gaurav Dwivedi, Tikendra Nath Verma
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引用次数: 0

摘要

内燃机中的替代燃料在环境可持续性和能源安全方面获得了极大关注。本研究采用机器学习(ML)方法,结合人工神经网络(ANN)和响应面法(RSM),对发动机特性进行分析。用于训练 ANN 和 RSM 模型的实验数据是通过实验设计工具获得的不同输入参数组合获得的。使用了四个输入参数:负载 25%-100%((1.3、2.6、3.9 和 5.2 kW)负载条件、转速(1200、1500 和 1800 RPM)、压缩比(17.5 和 18.5)以及生物柴油-柴油混合物(柴油、SM20、SM40、SM60、SM80 和 SM100)。结果表明,ANN 的预测能力较强,其训练和测试回归系数 (R2) 分别为 0.975 和 0.948,而 RSM 的 R2 为 0.992。RSM 和 ANN 的优化结果为:BTE(29.4% 和 29.1%)、BSFC(0.0.3201 和 0.334 kg/kWh)、IMEP(2.83 和 2.69 巴)、CO2(922.72 和 940.87 g/kwh)、NOx(964 和 937 ppm)。与实验数据相比,误差约为 5%。由此可以推断,RSM 和 ANN 可用来建立具有高度可预测性的工艺模型,并可根据工艺或问题的不同采用不同的技术进行优化。
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Exploring the performance and emission characteristics of a dual fuel CI engine using microalgae biodiesel and diesel blend: a machine learning approach using ANN and response surface methodology

Alternative fuels in internal combustion engines have gained significant attention to environmental sustainability and energy security. The study employs a machine-learning (ML) approach, integrating artificial neural networks (ANN) and response surface method (RSM), to analyze the engine characteristics. The experimental data used to train the ANN and RSM model was obtained by employing different combinations of input parameters obtained by the Design of the experiment tool. Four input parameters load 25–100% ((1.3, 2.6, 3.9, and 5.2 kW) loading condition, speed (1200, 1500, and 1800 RPM), compression ratio (17.5 and 18.5), and biodiesel–diesel blends (Diesel, SM20, SM40, SM60, SM80 and SM100) were used. The results show predictability for ANN with training and test regression coefficients (R2) of 0.975 and 0.948 whereas RSM with R2 of 0.992. Optimized results for RSM and ANN, BTE (29.4% and 29.1%), BSFC (0.0.3201 and 0.334 kg/kWh), IMEP (2.83 and 2.69 bar), and CO2 (922.72 and 940.87 g/kwh), NOx (964 and 937 ppm). When compared with experimental data, the error was about 5%. It can be inferred that RSM and ANN may be used to model processes with high predictability and that optimization can be carried out using various techniques depending on the process or problem.

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来源期刊
Environment, Development and Sustainability
Environment, Development and Sustainability Economics, Econometrics and Finance-Economics and Econometrics
CiteScore
10.20
自引率
6.10%
发文量
754
期刊介绍: Environment, Development and Sustainability is an international and multidisciplinary journal covering all aspects of the environmental impacts of socio-economic development. It is also concerned with the complex interactions which occur between development and environment, and its purpose is to seek ways and means for achieving sustainability in all human activities aimed at such development. The subject matter of the journal includes the following and related issues: -mutual interactions among society, development and environment, and their implications for sustainable development -technical, economic, ethical and philosophical aspects of sustainable development -global sustainability - the obstacles and ways in which they could be overcome -local and regional sustainability initiatives, their practical implementation, and relevance for use in a wider context -development and application of indicators of sustainability -development, verification, implementation and monitoring of policies for sustainable development -sustainable use of land, water, energy and biological resources in development -impacts of agriculture and forestry activities on soil and aquatic ecosystems and biodiversity -effects of energy use and global climate change on development and sustainability -impacts of population growth and human activities on food and other essential resources for development -role of national and international agencies, and of international aid and trade arrangements in sustainable development -social and cultural contexts of sustainable development -role of education and public awareness in sustainable development -role of political and economic instruments in sustainable development -shortcomings of sustainable development and its alternatives.
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