Thinking Fast and Slow: Optimization Decomposition Across Timescales
- Creators
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Goel, Gautam
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Chen, Niangjun
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Wierman, Adam
Abstract
Many real-world control systems, such as the smart grid and software defined networks, have decentralized components that react quickly using local information and centralized components that react slowly using a more global view. This work seeks to provide a theoretical framework for how to design controllers that are decomposed across timescales in this way. The framework is analogous to how the network utility maximization framework uses optimization decomposition to distribute a global control problem across independent controllers, each of which solves a local problem; except our goal is to decompose a global problem temporally, extracting a timescale separation. Our results highlight that decomposition of a multi-timescale controller into a fast timescale, reactive controller and a slow timescale, predictive controller can be near-optimal in a strong sense. In particular, we exhibit such a design, named Multi-timescale Reflexive Predictive Control (MRPC), which maintains a per-timestep cost within a constant factor of the offline optimal in an adversarial setting.
Additional Information
Copyright is held by author/owner(s).Attached Files
Submitted - 1704.07785.pdf
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Additional details
- Eprint ID
- 85709
- Resolver ID
- CaltechAUTHORS:20180409-162520743
- Created
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2018-04-10Created from EPrint's datestamp field
- Updated
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2022-12-23Created from EPrint's last_modified field