燃料发动机的燃料消费优化使用人工神经网络

Agung Nugroho, Mochamad Anugrah Tri Nurhasan, Rony Wijanarko, Darmanto
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引用次数: 0

摘要

发动机控制单元(ECU)是火花点火(SI)发动机中电流喷射技术的主要部件。燃烧系统,包括喷射正时和点火正时,由ECU记录的发动机图控制。为了最大限度地提高发动机的性能,可以使用ECU重新映射。重新映射目前效率不高,因为数据通常以试错的方式使用。为了解决这些问题,人工神经网络(ANN)技术正在发展。在本研究中,使用人工神经网络(ANN)对燃油经济性优化的发动机重映射进行预测。本研究的目的是使用人工神经网络(Artificial Neural Network)来比较发动机重新映射前后摩托车的性能。一套测功机是使用在这个研究方法来评估性能的4冲程,160毫升火花塞点火发动机方面的燃油消耗,功率和扭矩。当前(标准)引擎图包含了电子控制单元(ECU)的一些数据,用于启动优化过程。Pertalite和Pertamax是从最近的加油站购买的,是本研究中使用的燃料。此外,利用人工神经网络进行优化,目标是在保持燃油消耗不变的情况下,将扭矩和功率提高10%。在ECU中重新实施后,将在测功机上再次测试人工神经网络训练的结果。研究发现,利用训练函数,利用回归值R = 0.98993和人工神经网络预测结果,可以提高机器性能。优化后的发动机性能与出厂默认性能相比,扭矩提高10.9%,功率提高9.5%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimasi konsumsi bahan bakar pada mesin bensin menggunakan artificial neural network
The engine control unit (ECU) is the primary component of the current injection technique used in spark ignition (SI) engines. The combustion system, which includes injection timing and ignition timing, is controlled by the engine map recorded in the ECU. To maximize an engine's performance, ECU remapping can be used. Remapping is currently not efficient because the data is typically employed in a trial-and-error fashion. To solve these issues, artificial neural network (ANN) techniques are being developed. In this study, engine remapping for fuel economy optimization is predicted using an artificial neural network (ANN). The purpose of this study is to use ANN to compare motorbike performance between before and after engine remapping (Artificial Neural Network). A set of dynamometers is used in this study approach to assess the performance of the 4 stroke, 160 CC spark plug ignition engine in terms of fuel consumption, power, and torque. A current (standard) engine map that contains a number of data from the electronic control unit (ECU) is used to start the optimization process. Pertalite and Pertamax, which are purchased from the closest gas station, are the fuels used in this study. In addition, optimization utilizing ANN is carried out with the goal of 10% increases in torque and power while maintaining a consistent fuel consumption. Following re-implementation into the ECU, the outcomes of the ANN training will be tested again on the dynamometer. The study's finding is that by using the training function, it is possible to improve machine performance using the regression value of R = 0.98993 and the ANN prediction outcomes. Comparing the optimized engine performance to the factory default engine performance, torque increased 10.9% and power rose 9.5%.
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