Hybrid Neural Network Based Model for Predicting the Performance of a Two Stroke Spark Ignition Engine

M. M. Wani, M. Wani
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引用次数: 6

Abstract

This paper describes a hybrid neural network based model for predicting the performance of a single cylinder two stroke cycle spark ignition engine. The engine was run in the carburetor mode and engine mapping was done by collecting the engine performance data in terms of power and brake specific fuel consumption for various combinations of speed, load and air-fuel ratio. This data was used for predicting the engine performance. The work first presents a model that is based on conventional thermodynamic and gas dynamic relations. The performance of the model is improved by integrating a conventional model with a distributed and synergistic neural network. The resulting hybrid model follows closely the expected results in predicting the performance of a two stroke cycle spark ignition engine. The analysis shows that the hybrid model has learnt the input output data relation very well and is capable to predict the output in the decided domain.
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基于混合神经网络的二冲程火花点火发动机性能预测模型
本文提出了一种基于混合神经网络的单缸二冲程循环点火发动机性能预测模型。发动机在化油器模式下运行,通过收集发动机在各种速度、负载和空燃比组合下的功率和制动比油耗的性能数据来绘制发动机图。这些数据被用来预测发动机的性能。本文首先提出了一个基于传统热力学和气体动力学关系的模型。将传统模型与分布式协同神经网络相结合,提高了模型的性能。所建立的混合动力模型与预测二冲程循环火花点火发动机性能的预期结果非常接近。分析表明,混合模型很好地学习了输入输出数据之间的关系,并能在给定的域内预测输出。
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