首页> 外文期刊>Applied Soft Computing >An ensemble neuro-fuzzy radial basis network with self-adaptive swarm based supervisor and negative correlation for modeling automotive engine coldstart hydrocarbon emissions: A soft solution to a crucial automotive problem
【24h】

An ensemble neuro-fuzzy radial basis network with self-adaptive swarm based supervisor and negative correlation for modeling automotive engine coldstart hydrocarbon emissions: A soft solution to a crucial automotive problem

机译:具有自适应群的主管和负相关性的集成神经模糊径向基网络,用于对汽车发动机冷启动碳氢化合物排放进行建模:一种解决关键汽车问题的软解决方案

获取原文
获取原文并翻译 | 示例
           

摘要

In this paper, the authors propose a novel intelligent framework to identify the exhaust gas temperature (T-exh) and the engine-out hydrocarbon emission (HCraw) during the coldstart operation of an automotive engine. These are two key variables affecting the cumulative tailpipe emissions (HCcum) over the coldstart phase, which is the number one emission-related problem for today's spark-ignited (SI) engine vehicles. The coldstart operation is regarded as a highly nonlinear, transient and uncertain phenomenon. The proposed identifier integrates different soft computational strategies, i.e. neuro-fuzzy computing, fuzzy controller, swarm intelligent computing, and ensemble network design, beneficial for capturing both uncertainty and nonlinearity of the problem at hand. Furthermore, concepts of negative correlation topology design and hierarchical pair competition based parallel training are extracted from literature to form a diverse and robust ensemble identifier. Training of each neuro-fuzzy sub-component in ensemble network is carried out using a hybrid learning scheme. One feature of the antecedent part of neuro-fuzzy system, i.e. number of linguistic terms for each variable, as well as characteristics of rules in rule base are adjusted using hierarchical fair competition-based parallel adaptive particle swarm optimization (HFC-APSO) and the rest of features, i.e. the shape of (membership functions) MFs and the consequent variables of each rule, are tuned using back-propagation (BP) and steepest descent techniques. As it was mentioned, the authors try to design an ensemble identifier with acceptable rate of generalization, robustness and accuracy. These features help them to tame the intuitive uncertainties associated with the rate of T-exh and HCraw emission over the coldstart period. To do so, the potential characteristics of sub-components (solution domain of network design) are divided into a set of partitions and then HFC-APSO is utilized to explore/exploit each of those partitions. The exploration/exploitation rate of PSO (the core of HFC-APSO) is dynamically controlled by a fuzzy logic based controller. Hence, it is expected that HFC-APSO yields a set of accurate sub-identifiers with different operating characteristics. To further foster the diversity of the ensemble, negative correlation criterion is considered which obstructs the integration of identical sub-identifiers. The identification results demonstrate that the method is highly capable of providing an authentic model for estimation of T-exh and HCraw emission during the coldstart period. (C) 2015 Elsevier B.V. All rights reserved.
机译:在本文中,作者提出了一种新颖的智能框架,用于识别汽车发动机冷启动运行期间的废气温度(T-exh)和发动机排出的碳氢化合物排放量(HCraw)。这是影响冷启动阶段累积排气管排放(HCcum)的两个关键变量,这是当今火花点火(SI)发动机车辆与排放相关的头号问题。冷启动操作被认为是高度非线性,瞬态和不确定的现象。所提出的标识符集成了不同的软计算策略,即神经模糊计算,模糊控制器,群体智能计算和集成网络设计,有利于捕获当前问题的不确定性和非线性。此外,从文献中提取了负相关拓扑设计和基于分层对竞争的并行训练的概念,以形成多样且鲁棒的整体标识符。使用混合学习方案对集成网络中的每个神经模糊子组件进行训练。使用基于分层公平竞争的并行自适应粒子群优化(HFC-APSO)和神经网络,可以调整神经模糊系统的前一个功能,即每个变量的语言术语数量以及规则库中规则的特征。其余特征(即(隶属函数)MF的形状以及每个规则的结果变量)使用反向传播(BP)和最速下降技术进行调整。如前所述,作者尝试设计具有可接受的泛化率,鲁棒性和准确性的整体标识符。这些功能有助于他们解决与冷启动期间T-exh和HCraw排放量相关的直观不确定性。为此,将子组件的潜在特征(网络设计的解决方案域)划分为一组分区,然后使用HFC-APSO来探索/利用每个分区。 PSO(HFC-APSO的核心)的探索/开发速率由基于模糊逻辑的控制器动态控制。因此,可以预期的是,HFC-APSO会产生一组具有不同操作特性的精确子标识符。为了进一步促进整体的多样性,考虑使用负相关准则,该准则阻碍了相同子标识符的集成。鉴定结果表明,该方法能够为冷启动期间的T-exh和HCraw排放估算提供可靠的模型。 (C)2015 Elsevier B.V.保留所有权利。

著录项

相似文献

  • 外文文献
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号