OPTIMIZATION OF THE TRAJECTORY OF SENSORS MOTION TAKING INTO ACCOUNT THE IMPORTANCE OF THE AREAS OF THE MONITORING AREA SEGMENTS AND THE PROBABILITY OF DETECTION OF OBJECTS

V. Petrivskyi, Yaroslav Petrivskyi, V. Shevchenko, I. Sinitsyn
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引用次数: 1

Abstract

Due to the widespread use of sensors in data collection and processing, one of the key criteria is the amount of information accumulated and energy efficiency. While monitoring the territory, the movement of research objects is common. As a result there is a change in the probability of their detection in the segment of the territory. Also, segments may be of varying importance. Taking these factors into account will significantly increase the amount of information accumulated. The article presents a method of constructing the optimal trajectory of sensors motion taking into account the importance of territory segments and the probability of detection of objects. The method is based on the representation of distribution of the probability of detection of objects and the importance of territory segments in the form of layers and their integration into a layer of the probable value of detected objects. Seven classes of the probable value of detected objects with corresponding numerical and graphical equivalents are considered. As optimal trajectory of sensors motion the trajectory which provides minimum energy expenditure is meant. Energy efficiency is achieved by constructing a trajectory of minimum length as a solution to the salesman’s problem. The set of points at which the trajectory is built is formed on the basis of the layer of the probable value of the detected objects after the procedure of replacing the nodes. A separate node replacement class, or superposition of node replacement classes, is proposed for each class of probable value of detected objects. Replacement of five, three and two nodes is described. A genetic algorithm with modification of crossing and selection rules was used to find a solution to this problem. A set of trajectories is constructed using the proposed algorithm. The analysis of the obtained results confirmed the efficiency of the developed method and allowed to increase the energy efficiency when covering a given area by 76 %.
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优化传感器的运动轨迹,同时考虑监控区域段的区域重要性和检测到物体的概率
由于传感器在数据收集和处理中的广泛应用,其中一个关键标准是积累的信息量和能量效率。在监测领土时,研究对象的移动是常见的。其结果是,它们在该区域内被发现的概率发生了变化。此外,各部分的重要性可能各不相同。考虑到这些因素将大大增加积累的信息量。本文提出了一种考虑区域段重要性和目标检测概率的传感器运动最优轨迹构造方法。该方法是基于以层的形式表示被检测对象的概率分布和区域段的重要性,并将其整合到被检测对象的概率值层中。考虑了7类具有相应数值和图形等值的被检测对象的可能值。传感器运动的最优轨迹是能量消耗最小的轨迹。通过构造一个最小长度的轨迹作为推销员问题的解来实现能源效率。在节点替换后,根据被检测对象的概率值层形成建立轨迹的点集。对于每一类检测对象的可能值,提出了一个单独的节点替换类或节点替换类的叠加。介绍了五节点、三节点和二节点的替换。采用修改杂交规则和选择规则的遗传算法求解这一问题。利用该算法构造了一组轨迹。对所得结果的分析证实了所开发方法的效率,并允许在覆盖给定区域时将能源效率提高76%。
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Journal of Automation and Information Sciences
Journal of Automation and Information Sciences AUTOMATION & CONTROL SYSTEMS-
自引率
0.00%
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审稿时长
6-12 weeks
期刊介绍: This journal contains translations of papers from the Russian-language bimonthly "Mezhdunarodnyi nauchno-tekhnicheskiy zhurnal "Problemy upravleniya i informatiki". Subjects covered include information sciences such as pattern recognition, forecasting, identification and evaluation of complex systems, information security, fault diagnosis and reliability. In addition, the journal also deals with such automation subjects as adaptive, stochastic and optimal control, control and identification under uncertainty, robotics, and applications of user-friendly computers in management of economic, industrial, biological, and medical systems. The Journal of Automation and Information Sciences will appeal to professionals in control systems, communications, computers, engineering in biology and medicine, instrumentation and measurement, and those interested in the social implications of technology.
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