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Environment and Solar Map Construction for Solar-Powered Mobile Systems

机译:太阳能移动系统的环境和太阳图构建

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Energy harvesting using solar panels can significantly increase the operational life of mobile robots. If a map of expected solar power is available, energy efficient paths can be computed. However, estimating this map is a challenging task, especially in complex environments. In this paper, we show how the problem of estimating solar power can be decomposed into the steps of magnitude estimation and solar classification. Then, we provide two methods to classify a position as sunny or shaded: a simple data-driven Gaussian Process method and a method that estimates the geometry of the environment as a latent variable. Both of these methods are practical when the training measurements are sparse, such as with a simple robot that can only measure solar power at its own position. We demonstrate our methods on simulated randomly generated environments. We also justify our methods with measured solar data by comparing the constructed height maps with satellite images of the test environments, and in a cross-validation step where we examine the accuracy of predicted shadows and solar current.
机译:使用太阳能电池板收集能量可以显着提高移动机器人的使用寿命。如果可以获得预期的太阳能图,则可以计算出节能路径。但是,估计此地图是一项艰巨的任务,尤其是在复杂的环境中。在本文中,我们展示了如何将估算太阳能的问题分解为幅度估算和太阳能分类的步骤。然后,我们提供了两种将位置分类为晴天或阴暗的方法:简单的数据驱动的高斯过程方法和一种将环境的几何形状估计为潜在变量的方法。这两种方法在训练测量稀疏时都是实用的,例如使用只能在其自身位置测量太阳能的简单机器人。我们在随机模拟的环境中演示我们的方法。我们还通过将构建的高度图与测试环境的卫星图像进行比较,并使用测得的太阳数据来证明我们的方法的正确性,并在交叉验证步骤中检查了预测的阴影和太阳电流的准确性。

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