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首页> 外文期刊>Journal of intelligent & fuzzy systems: Applications in Engineering and Technology >Novel optimization technique to charge E-rickshaw battery using single sensor based MPPT of SPV module
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Novel optimization technique to charge E-rickshaw battery using single sensor based MPPT of SPV module

机译:基于SPV模块的单传感器的MPPT充电E-rickshaw电池的新颖优化技术

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摘要

The battery era has started to compensate the demand of the energy while the charging issues still exist. Thus, demand of reliable and optimized charging is required to charge cell/battery. In this paper novel optimized technique is proposed, based on gravitational search algorithm (GSA) to charge e-rickshaw battery using single sensor based maximum power point tracking (MPPT) of solar photovoltaic (SPV) module. There are various metaheauristic and heuristic techniques are available like Cauchy and Gaussian sine cosine optimization (CGSCO) intelligent technique, evolutionary algorithms, stochastic algorithms, Swarm optimization technique, ant colony technique, neural algorithms, fuzzy logic algorithms to optimize the charging current of cell/battery. These techniques take more iteration to give the optimal solution. Moreover, GSA is the high level intelligent technique which is used in multi area to optimize the various parameters in engineering fields. It is very ease to find the optimal solution in search space. This approach is novel in the field of e-rickshaw battery charging. Therefore, the mathematical algorithm based on GSA has been developed to optimize the current of charging cell/battery. The performance of GSA optimization technique is verified and compared with the metaheauristic based CGSCO optimization technique. It is observed that GSA is easy to design and reduce the cost of charger.
机译:电池时代已开始补偿能源的需求,同时仍存在充电问题。因此,需要对电池/电池充电可靠和优化的充电需求。本文基于引力搜索算法(GSA),提出了采用太阳能光伏(SPV)模块的单个传感器最大功率点跟踪(MPPT)来充电E-Rickshaw电池的新颖优化技术。有各种各样的成人造物和启发式技术可用,如Cauchy和Gaussian Sine余弦优化(CGSCO)智能技术,进化算法,随机算法,群优化技术,蚁群技术,神经算法,模糊算法,用于优化单元的充电电流/电池。这些技术需要更迭代以提供最佳解决方案。此外,GSA是用于多区域的高级智能技术,以优化工程领域中的各种参数。在搜索空间中找到最佳解决方案非常便利。这种方法在E-rickshaw电池充电领域是新颖的。因此,已经开发了基于GSA的数学算法来优化充电单元/电池的电流。与基于成分的CGSCO优化技术进行了验证并将GSA优化技术的性能进行了验证。观察到GSA易于设计和降低充电器的成本。

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