用于跟踪环境控制行为的自适应传感器/执行器网络

Masayuki Nakamura, A. Sakurai, Takumi Yamada, Jiro Nakamura
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引用次数: 0

摘要

为了开发一个节能的环境控制系统,我们提出了无线传感器/执行器网络,该网络对用户的环境控制行为进行分类,如照明,并根据传感器节点的选择配置网络。在我们的系统中,无线遥控节点监控用户的环境控制动作,占用传感器网络同时检测用户的运动。系统学习远程控制节点和占用传感器网络的响应之间的关系,仅通过占用传感器网络对用户的行为进行分类。系统根据信息增益准则选择信息传感器节点进行行为分类。这些选择的节点具有较高的感知成本。基于感知成本和通信成本度量来控制传感器网络路由。在生成的传感器网络中,感知性能与原始网络相同,但资源被成功地分配给节点。此外,还可以识别信息较少和冗余的节点。我们使用传感器/执行器网络测试平台演示了跟踪环境控制行为和传感器节点选择。
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Adaptive sensor/actuator networks for tracking environment control behaviors
To develop an energy-saving environment control system, we propose wireless sensor/actuator networks which classify the user's behaviors for environment control such as lighting and configure the network according to sensor node selection. In our system, a wireless remote control node monitors the user's environment control actions and occupancy sensor networks detect the user's movement simultaneously. The system learns the relationship among the responses of the remote control node and the occupancy sensor networks to classify the user's behaviors only with the occupancy sensor networks. The system chooses informative sensor nodes for the behavior classification based on the information gain criterion. These chosen nodes have high sensing cost. Sensor network routing is controlled based on the sensing cost and communication cost metric. In the resultant sensor networks, the sensing performance is the same as that in the original network, but the resources are successfully allocated to the nodes. In addition, less informative and redundant nodes are identified. We demonstrate tracking environment control behaviors and sensor node selection using the sensor/actuator networks testbed.
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