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首页> 外文期刊>Systems Journal, IEEE >A Min–Max Model Predictive Control Approach to Robust Power Management in Ambulatory Wireless Sensor Networks
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A Min–Max Model Predictive Control Approach to Robust Power Management in Ambulatory Wireless Sensor Networks

机译:动态无线传感器网络中鲁棒电源管理的最小-最大模型预测控制方法

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This paper addresses the problem of transmission power control within a network of resource-constrained wireless sensors that operate within a particular ambient healthcare environment. Sensor data transmitted to a remote base station within the network arrive subject to node location, orientation, and movement. Power is optimally allocated to all channels using a novel resource efficient algorithm. The proposed algorithm is based on a computationally efficient min–max model predictive controller that uses an uncertain linear state-space model of the tracking error that is estimated via local received signal strength feedback. An explicit solution for the power controller is computed offline using a multiparametric quadratic solver. It is shown that the proposed design leads to a robust control law that can be implemented quite readily on a commercial sensor node platform where computational and memory resources are extremely limited. The design is validated using a fully IEEE 802.15.4 compliant testbed using Tmote Sky sensor nodes mounted on fully autonomous MIABOT Pro miniature mobile robots. A repeatable representative selection of scaled ambulatory scenarios is presented that is quite typical of the data that will be generated in this space. The experimental results illustrate that the algorithm performs optimal power assignments, thereby ensuring a balance between energy consumption and a particular outage-based quality of service requirement while robustly compensating for disturbance uncertainties such as channel fading, interference, quantization error, noise, and nonlinear effects.
机译:本文解决了在特定环境医疗环境中运行的资源受限的无线传感器网络中的传输功率控制问题。传输到网络中远程基站的传感器数据的到达取决于节点的位置,方向和移动。使用新颖的资源高效算法,可以将功率最佳地分配给所有通道。所提出的算法基于高效计算的最小-最大模型预测控制器,该控制器使用通过本地接收信号强度反馈估算的跟踪误差的不确定线性状态空间模型。使用多参数二次求解器可以离线计算电源控制器的显式解决方案。结果表明,所提出的设计导致了鲁棒的控制律,该律可以很容易地在商业传感器节点平台上实现,在该平台上计算和存储资源极为有限。使用安装在完全自主的MIABOT Pro微型移动机器人上的Tmote Sky传感器节点的完全符合IEEE 802.15.4的测试平台,可以对设计进行验证。提出了可缩放的动态场景的可重复的代表性选择,这是将在该空间中生成的数据的非常典型的选择。实验结果表明,该算法执行了最佳的功率分配,从而确保了能耗与特定的基于中断的服务质量要求之间的平衡,同时稳健地补偿了干扰不确定性,例如信道衰落,干扰,量化误差,噪声和非线性影响。

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