基于自编码器和深度神经网络的船用柴油机能耗分析

Defu Zhang, Kangli Wang, Jianfeng Gao, Xiuming Che
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引用次数: 0

摘要

为了提高船舶智能化能效管理水平,对船用柴油机的燃油利用效率进行了评估。本文建立了基于自编码器和深度神经网络的船用柴油机油耗模型,利用自编码器对数据进行非线性降维,获得更多有价值的数据特征,从而提高了模型的精度。利用实际船舶正常航行时的航行参数、环境参数和燃油消耗量对模型进行了验证和比较。所建立的模型准确率达到95.19%,结果表明,所建立的模型能够满足船用柴油机能耗的预测与评价分析。
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Autoencoder and Deep Neural Network based Energy Consumption Analysis of Marine Diesel Engine
In order to improve the intelligent energy efficiency management of ships, evaluate the fuel utilization efficiency of marine diesel engine. In this paper, a fuel consumption model of marine diesel engine based on autoencoder and deep neural network is established, and the autoencoder is used to perform nonlinear dimensionality reduction on the data to obtain more valuable data features, thereby improving the accuracy of the model. The model is verified and compared using the sailing parameters, environmental parameters and fuel consumption of the actual ship during normal sailing. The accuracy rate of the model established in this paper reaches 95.19%, and the results show that the model in this paper can meet the prediction and evaluation analysis of the energy consumption of the marine diesel engine.
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