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Prediction of Performance and Emissions of a Biodiesel Fueled Lanthanum Zirconate Coated Direct Injection Diesel engine using Artificial Neural Networks

机译:利用人工神经网络预测生物柴油燃料镧镀锌直喷式柴油机的性能和排放

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Different techniques are being attempted over the years to use low pollution emitting fuels in diesel engines to reduce tail pipe emissions with improved engine efficiency. Especially, Biodiesel fuel, derived from different vegetable oils, animal fat and waste cooking oil has received a great attention in the recent past. Transesterification is a proven simplest process to prepare biodiesel in labs with little infrastructure. Application of thermal barrier coatings (TBC) on the engine components is a seriously perused area of interest with low grade fuels like biodiesel fuels. Artificial neural networks (ANN) are gaining popularity to predict the performance and emissions of diesel engines with fairly accurate results besides the thermodynamic models with considerably less complexity and lower computing time. In the present study, experiments have been conducted on a single cylinder diesel engine whose combustion elements are coated with an experimental thermal barrier coating material made from Lanthanum Zirconate. Biodiesel has been prepared from Pongamia Pinnata oil through transesterification process. A series of experiments are conducted on the engine with and without thermal barrier coating using diesel and biodiesel fuels. Performance and emissions data from the experiments is used to train the network with the load, fuel type and coating being the input layer and the brake specific fuel consumption, brake thermal efficiency, CO, HC and NO_x emissions being the output layer. Results showed that the coating of engine components with lanthanum zirconate TBC resulted in improved engine efficiency with reduced emissions. ANN model is tested for its accuracy to predict the performance and emissions of the engine with the R values of 0.99 for both the training and test data with a mean square error of 0.002 and a mean relative error of 6.8%
机译:多年来正在尝试不同的技术,以在柴油发动机中使用低污染发射燃料,以降低具有改善发动机效率的尾管排放。特别是,源自不同植物油,动物脂肪和废物烹饪油的生物柴油燃料在最近的过去受到了极大的关注。酯交换是一种经过验证的最简单的过程,可以在具有很少基础设施的实验室中制作生物柴油。热屏障涂层(TBC)在发动机部件上的应用是具有生物柴油等低等级燃料的严重熔化区域。人工神经网络(ANN)越来越受欢迎,以预测具有相当准确的结果的柴油发动机的性能和排放,除了热力学模型,具有相当较小的复杂性和更低的计算时间。在本研究中,在单个气缸柴油发动机上进行了实验,其燃烧元件涂覆有由镧锆的实验热障涂层材料。生物柴油通过酯交换过程从Pongamia Pinnata Ill制备。通过使用柴油和生物柴油燃料,在发动机上进行一系列实验,并且没有热阻涂层。实验中的性能和排放数据用于将网络与负载,燃油型和涂层培训是输入层和制动器特定的燃料消耗,制动热效率,CO,HC和NO_X排放是输出层。结果表明,用镧锆酸酯TBC涂覆发动机部件,导致发动机效率降低,排放减少。 ANN模型进行了准确性,以预测发动机的性能和排放,R值为0.99,对于培训和测试数据,平均方误差为0.002,平均相对误差为6.8%

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