Róbinson Medina Sánchez, S. Stuijk, Dip Goswami, T. Basten
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引用次数: 7
Abstract
Image-based control systems are becoming common in domains such as robotics, healthcare and industrial automation. Coping with a long sample period because of the latency of the image processing algorithm is an open challenge. Modern multi-core platforms allow to address this challenge by pipelining the sensing algorithm. Often, such systems share the resources with other tasks. We show that the performance of an image-based controller can be improved by pipelining the image processing algorithm on unallocated cores. It can be further improved by dynamically allocating (i.e. reconfiguring) cores that are temporarily not used by other tasks to the sensing pipeline. We present a state-based modelling strategy for pipelined and reconfigurable pipelined sensing. We introduce a control design strategy for reconfigurable pipelined systems that assures stability and shows improvement in the control performance.