Data Collection and Analysis of Visible Light Micro-Ecological Remote Sensing Based on Task Debugging and Optimization

Zhenyu Li,Jianguo Xia, Zhiyuan Xin

ACTA MICROSCOPICA(2020)

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Abstract
Two popular strategies for scheduling optimization are greedy scheduling and genetic algorithm. In this paper, a compound scheduler that can search for the request subsets not competing with other requests is proposed based on task scheduling optimization, and different scheduling optimization algorithms are applied to the subsets. The feasibility of this method depends mostly on the visible light eco-satellite model and the time when the detection request subsets become truly independent. The results suggest that understanding the competition among requests can provide opportunities for applying different scheduling strategies to the request subsets. It can not only save the overall computation time but also allow the application of strategies such as exhaustive planning, which is not feasible for the while request set. In conclusion, this paper indicated that the task scheduling optimization can save the overall computation time for the acquisition and analysis of visible light micro-ecological remote sensing satellites.
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Key words
Task Scheduling Optimization,Visible Light micro-ecological Remote Sensing,Data Acquisition
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