预测智能距离对太阳能汽车用户来说是空的

S. Jayamoorthy, A. Aravindhan, V. Hariharan, B. Pandhalarajan
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引用次数: 0

摘要

我们的主要思想是对太阳能汽车的能耗进行预测和优化。太阳能汽车包含光伏电池(PV)。它以太阳能汽车产生的热量为基础产生电流。它根据热量进行分析,显示能源消耗,并预测太阳能汽车可以行驶多少距离。每个司机都有自己的驾驶模式和特点。例如,如果一个司机以一定的速度行驶,然后突然刹车,我们的项目就会预测他在这个速度下可以行驶多少距离,以及浪费了多少电。影响驾驶员模式的数据特征有三种。可能影响功耗的因素有天气状况、道路特性、驾驶特性。根据上述特征,我们可以预测驾驶员可以驾驶多少距离。能源效率的最大决定因素是驾驶模式、驾驶变化和温度。并借助张量流输入数据。用户通过张量流输入数据,张量流通过Numpy的图形预测结果。numpy将把输出存储在数据库中。
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Predicting smart distance till empty for solar vehicle users
Our main idea is to predict that the energy consumption and optimization of solar car. The solar car contains photovoltaic cells (PV).It generates current based on heat generated on solar car. It analyses based on heat shows the power consumption and predicts that how much distance the solar car can travel. Each individual driver has having own driving patterns and characteristics. For example if a driver drives at a certain speed and applies a sudden break, our project predicts that how much distance he can travel at the speed and how much amount the electricity is wasted. There are three data characteristics affecting driver’s pattern. The factors that might affect the power consumption are weather condition, road characteristics, driving characteristics. With the above said characteristics, we can predict that how much driver can drive for a distance. The most determinants of energy efficiency found to be driving patterns, variations in driving, temperature. And the data inputted with the help of Tensor flow. The user will input the data through the tensor flow and the tensor flow will predict the outcome through the graph of a Numpy. And the numpy will store the output in the database.
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