首页> 外文期刊>Advances in Mechanical Engineering >An artificial neural network developed for predicting of performance and emissions of a spark ignition engine fueled with butanol–gasoline blends:
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An artificial neural network developed for predicting of performance and emissions of a spark ignition engine fueled with butanol–gasoline blends:

机译:开发了一个人工神经网络,用于预测以丁醇-汽油混合物为燃料的火花点火发动机的性能和排放:

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The engine experiments require multiple tests that are hard, time-consuming, and high cost. Therefore, an artificial neural network model was developed in this study to successfully predict the engine performance and exhaust emissions when a port fuel injection spark ignition engine fueled with n-butanol–gasoline blends (0–60?vol.% n-butanol blended with gasoline referred as G100-B60) under various equivalence ratio. In the artificial neural network model, compression ratio, equivalence ratio, blend percentage, and engine load were used as the input parameters, while engine performance and emissions like brake thermal efficiency, brake-specific fuel consumption, carbon monoxide, unburned hydrocarbons, and nitrogen oxides were used as the output parameters. In comparison between experimental data and predicted results, a correlation coefficient ranging from 0.9929 to 0.9996 and a mean relative error ranging from 0.1943% to 9.9528% were obtained. It is indicated that the developed artificial neural network ...
机译:发动机实验需要进行多次艰苦,耗时且成本高的测试。因此,在这项研究中开发了一个人工神经网络模型,以成功预测当使用正丁醇-汽油混合物(0-60%(体积)正丁醇与各种当量比的汽油(称为G100-B60)。在人工神经网络模型中,压缩比,当量比,混合比例和发动机负荷被用作输入参数,而发动机性能和排放物(如制动器热效率,制动器特定燃料消耗,一氧化碳,未燃烧的碳氢化合物和氮)氧化物用作输出参数。通过比较实验数据和预测结果,得出相关系数在0.9929至0.9996之间,平均相对误差在0.1943%至9.9528%之间。这表明,发达的人工神经网络...

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