Two-stage capacity optimization approach of multi-energy system considering its optimal operation

Abstract With the depletion of fossil fuel and climate change, multi-energy systems have attracted widespread attention in buildings. Multi-energy systems, fuelled by renewable energy, including solar and biomass energy, are gaining increasing adoption in commercial buildings. Most of previous capacity design approaches are formulated based upon conventional operating schedules, which result in inappropriate design capacities and ineffective operating schedules of the multi-energy system. Therefore, a two-stage capacity optimization approach is proposed for the multi-energy system with its optimal operating schedule taken into consideration. To demonstrate the effectiveness of the proposed capacity optimization approach, it is tested on a renewable energy fuelled multi-energy system in a commercial building. The primary energy devices of the multi-energy system consist of biomass gasification-based power generation unit, heat recovery unit, heat exchanger, absorption chiller, electric chiller, biomass boiler, building integrated photovoltaic and photovoltaic thermal hybrid solar collector. The variable efficiency owing to weather condition and part-load operation is also considered. Genetic algorithm is adopted to determine the optimal design capacity and operating capacity of energy devices for the first-stage and second-stage optimization, respectively. The two optimization stages are interrelated; thus, the optimal design and operation of the multi-energy system can be obtained simultaneously and effectively. With the adoption of the proposed novel capacity optimization approach, there is a 14% reduction of year-round biomass consumption compared to one with the conventional capacity design approach.

[1]  X. J. Luo,et al.  Development of integrated demand and supply side management strategy of multi-energy system for residential building application , 2019, Applied Energy.

[2]  K. F. Fong,et al.  Investigation on part-load performances of combined cooling and power system primed by solid oxide fuel cell with different bottoming cycles , 2019, Journal of Power Sources.

[3]  I. Staffell,et al.  Maximising the value of electricity storage , 2016 .

[4]  Yuping Lu,et al.  Optimal design and operation of multi-energy system with load aggregator considering nodal energy prices , 2019, Applied Energy.

[5]  Michele Pinelli,et al.  Dynamic programming based methodology for the optimization of the sizing and operation of hybrid energy plants , 2019, Applied Thermal Engineering.

[6]  Xun Ma,et al.  Grid-Connected Semitransparent Building-Integrated Photovoltaic System: The Comprehensive Case Study of the 120 kWp Plant in Kunming, China , 2018 .

[7]  X. X. Zhou,et al.  Optimal unit sizing for small-scale integrated energy systems using multi-objective interval optimization and evidential reasoning approach , 2016 .

[8]  Lukumon O. Oyedele,et al.  Development of an IoT-based big data platform for day-ahead prediction of building heating and cooling demands , 2019, Adv. Eng. Informatics.

[9]  Noam Lior,et al.  Exergo-economic analysis method and optimization of a novel photovoltaic/thermal solar-assisted hybrid combined cooling, heating and power system , 2019, Energy Conversion and Management.

[10]  Zhengyi Luo,et al.  Multi-objective capacity optimization of a distributed energy system considering economy, environment and energy , 2019, Energy Conversion and Management.

[11]  Gioacchino Nardin,et al.  Planning and design of sustainable smart multi energy systems. The case of a food industrial district in Italy , 2018, Energy.