首页> 外文会议>ASME Internal Combustion Engine Division technical conference >APPLICATION OF A RECTIFIED LINEAR UNIT (RELU) BASED ARTIFICIAL NEURAL NETWORK TO CETANE NUMBER PREDICTIONS
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APPLICATION OF A RECTIFIED LINEAR UNIT (RELU) BASED ARTIFICIAL NEURAL NETWORK TO CETANE NUMBER PREDICTIONS

机译:基于整流线性单元(RELU)的人工神经网络在十六烷值预测中的应用

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Due to the high cost and time required to synthesize alternative fuel candidates for comprehensive testing, an Artificial Neural Network (ANN) can be used to predict fuel properties, allowing researchers to preemptively screen desirable fuel candidates. However, the accuracy of an ANN is limited by its error, measured by the root mean square error (RMSE), standard deviation, and r-squared values derived from a given input database. The present work improves upon an existing model for predicting the Cetane Number (CN) by changing the neuron activation function of the ANN from sigmoid to rectified linear unit (ReLU). This change to the ANN's architecture provides an increase in accuracy by reducing the RMSE by 21.4% (1.35 CN units), the average standard deviation across models by 28%, and increasing the r-squared value by 0.0492 across a wide range of molecular structures. Additionally, by using the ReLU activation function, input data is not required to be normalized, which reduces the likelihood of an inaccurate prediction on future fuel candidates which may have input parameters outside the range of normalization. Increasing the accuracy of the predictive ANN in this way will allow researchers to obtain more accurate fuel property predictions for promising fuel candidates.
机译:由于合成替代燃料以进行综合测试所需的成本和时间都很高,因此可以使用人工神经网络(ANN)来预测燃料性能,从而使研究人员能够提前筛选出理想的燃料候选者。但是,ANN的精度受到其误差的限制,误差是通过均方根误差(RMSE),标准偏差和从给定输入数据库得出的r平方值来衡量的。本工作通过将ANN的神经元激活功能从S型转变为整流线性单位(ReLU),改进了用于预测十六烷值(CN)的现有模型。 ANN架构的这一变化通过将RMSE降低了21.4%(1.35个CN单位),将模型之间的平均标准偏差降低了28%,并在各种分子结构中将r平方值提高了0.0492,从而提高了准确性。 。另外,通过使用ReLU激活功能,不需要对输入数据进行归一化,这减少了对未来燃料候选的不准确预测的可能性,该候选燃料的输入参数可能超出归一化范围。以这种方式提高预测性人工神经网络的准确性将使研究人员能够为有前途的候选燃料获得更准确的燃料特性预测。

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