A Fast Dynamic Internal Predictive Power Scheduling Approach for Power Management in Microgrids
This paper presents a Dynamic Internal Predictive Power Scheduling (DIPPS) approach for optimizing power management in microgrids, particularly focusingon external power exchanges among diverse prosumers. DIPPS utilizes a dynamic objective function with a time-varying binary parameter to control the...
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Zusammenfassung: | This paper presents a Dynamic Internal Predictive Power Scheduling (DIPPS)
approach for optimizing power management in microgrids, particularly focusingon
external power exchanges among diverse prosumers. DIPPS utilizes a dynamic
objective function with a time-varying binary parameter to control the timing
of power transfers to the external grid, facilitated by efficient usage of
energy storage for surplus renewable power. The microgrid power scheduling
problem is modeled as a mixed-integer nonlinear programmig (MINLP-PS) and
subsequently transformed into a mixed-integer linear programming (MILP-PS)
optimization through McCormick's relaxation to reduce the computational
complexity. A predictive window with 6 data points is solved at an average of
0.92s, a 97.6% improvement over the 38.27s required for the MINLP-PS
formulation, implying the numerical feasibility of the DIPPS approach for
real-time implementation. Finally, the approach is validated against a static
objective using real-world load data across three case studies with different
time-varying parameters, demonstrationg the ability of DIPPS to optimize power
exchanges and efficiently utilize distributed resources whie shifting the
eexternal power transfers to specified time durations. |
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DOI: | 10.48550/arxiv.2409.16643 |