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Prediction models for performance and emissions of a dual fuel CI engine using ANFIS

机译:使用ANFIS的双燃料CI发动机性能和排放的预测模型

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Dual fuel engines are being used these days to overcome shortage of fossil fuels and fulfill stringent exhaust gas emission regulations. They have several advantages over conventional diesel engines. In this context, this paper makes use of experimental results obtained from a dual fuel engine for developing models to predict performance and emission parameters. Conventional modelling efforts to understand the relationships between the input and the output variables, requires thermodynamic analysis which is complex and time consuming. As a result, efforts have been made to use artificial intelligence modelling techniques like fuzzy logic, Artificial Neural Network (ANN), Genetic Algorithm (GA), etc. This paper uses a neuro fuzzy modelling technique, Adaptive Neuro Fuzzy Inference System (ANFIS) for developing prediction models for performance and emission parameter of a dual fuel engine. Percentage load, percentage Liquefied Petroleum Gas (LPG) and Injection Timing (IT) have been used as input parameters, whereas output parameters include Brake Specific Energy Consumption (BSEC), Brake Thermal Efficiency (BTE), Exhaust Gas Temperature (EGT) and smoke. In order to further improve the prediction accuracy of the model, GA has been used to optimize ANFIS. GA optimized ANFIS gives higher prediction accuracy of more than 90% for all parameters except for smoke, where there is a substantial improvement from 46.67% to 73.33%, when compared to conventional ANFIS model.
机译:这些天使用双燃料发动机来克服化石燃料的短缺并满足严格的废气排放法规。与常规柴油发动机相比,它们具有多个优势。在这种情况下,本文利用从双燃料发动机获得的实验结果开发模型来预测性能和排放参数。为了理解输入和输出变量之间的关系而进行的常规建模工作需要进行热力学分析,这是复杂且耗时的。结果,已经努力使用诸如模糊逻辑,人工神经网络(ANN),遗传算法(GA)等的人工智能建模技术。本文使用了神经模糊建模技术,自适应神经模糊推理系统(ANFIS)。用于开发双燃料发动机的性能和排放参数的预测模型。负载百分比,液化石油气百分比(LPG)和喷射正时(IT)已用作输入参数,而输出参数包括制动比能耗(BSEC),制动热效率(BTE),排气温度(EGT)和烟气。为了进一步提高模型的预测准确性,GA已用于优化ANFIS。经过GA优化的ANFIS,除烟雾外,所有参数的预测精度均超过90%,与传统的ANFIS模型相比,烟度从46.67%大幅提高至73.33%。

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