Energy Storage Battery Life-Aware Collaborative Scheduling Strategy for Source-Grid-Load-Storage Systems

1. Introduction

With the global transition toward renewable energy and carbon neutrality goals, the integration of intermittent energy sources like wind and solar into power systems has accelerated. However, the inherent variability of renewables and fluctuating load demands pose significant challenges to energy management, particularly in industrial parks. Energy storage batteries play a pivotal role in stabilizing grids, reducing peak-valley differences, and enhancing economic efficiency. Yet, frequent charge-discharge cycles and improper operational strategies accelerate battery degradation, undermining long-term system sustainability.

This paper proposes a double-layer optimization framework to coordinate source-grid-load-storage (SGLS) systems while minimizing electricity costs and extending energy storage battery lifespan. The upper layer optimizes energy flow scheduling using time-of-use (TOU) pricing, while the lower layer employs genetic algorithms to manage battery charge-discharge behaviors. Experimental results demonstrate superior performance in cost reduction, renewable utilization, and battery longevity compared to conventional methods.

2. System Description

The SGLS system in an industrial park comprises photovoltaic (PV) arrays, wind turbines (WT), grid connections, loads, and energy storage systems (ESS). Renewable generation prioritizes load supply, with surplus energy stored in ESS during low-price periods. ESS discharges during peak hours to minimize grid purchases. The ESS consists of multiple independently controlled energy storage batteries, whose collective charge/discharge power must align with upper-layer scheduling decisions.

2.1 Wind Power Generation

Wind turbine output power PWTPWT​ depends on wind speed vv, air density ρρ, and rotor radius RR:PWT=12ρπR2v3CpPWT​=21​ρπR2v3Cp

where CpCp​ is the wind power coefficient. Wind variability directly impacts grid purchase decisions and ESS discharge frequency.

2.2 Photovoltaic Generation

PV output PPVPPV​ is influenced by solar irradiance GACGAC​ and panel temperature TcTc​:PPV=PSTC⋅GACGSTC⋅[1+δ(Tc−TSTC)]PPV​=PSTC​⋅GSTCGAC​​⋅[1+δ(Tc​−TSTC​)]Tc=Ta+30⋅GAC1000Tc​=Ta​+100030⋅GAC​​

where PSTCPSTC​, GSTCGSTC​, and TSTCTSTC​ denote standard test conditions, and δδ is the temperature coefficient (-0.47%/°C).

2.3 Energy Storage Battery Dynamics

ESS charge/discharge power PESSPESS​ must satisfy:−PmaxESS≤PESS≤PmaxESS−PmaxESS​≤PESS​≤PmaxESS

State of charge (SOC) is updated as:SOCt={SOCt−1−α⋅PESS⋅ηd⋅ΔtEESS,PESS≥0 (discharging)SOCt−1−(1−α)⋅PESS⋅ΔtEESS⋅ηc,PESS<0 (charging)SOCt​={SOCt−1​−EESSαPESS​⋅ηd​⋅Δt​,SOCt−1​−EESS​⋅ηc​(1−α)⋅PESS​⋅Δt​,​PESS​≥0 (discharging)PESS​<0 (charging)​

where ηdηd​, ηcηc​, and EESSEESS​ represent discharge efficiency, charge efficiency, and ESS capacity.

Battery lifespan degradation ΔStΔSt​ depends on depth of discharge (DOD), SOC fluctuations, and operational switching:ΔSt={1×10−4⋅DOD50%+Mt,normal operation1×10−4⋅DOD50%⋅(1+5%)+Mt,high-stress operationΔSt​={1×10−4⋅50%DOD​+Mt​,1×10−4⋅50%DOD​⋅(1+5%)+Mt​,​normal operationhigh-stress operation​Mt={1×10−6,charge/discharge mode switching0,otherwiseMt​={1×10−6,0,​charge/discharge mode switchingotherwise​

Cumulative lifespan after nn cycles:Sn=1−∑t=1nΔStSn​=1−t=1∑n​ΔSt

3. Double-Layer Optimization Model

3.1 Upper Layer: Economic Cost Minimization

The upper layer employs mixed-integer linear programming (MILP) to minimize electricity costs:min⁡∑t=1TCtgrid⋅(Ptgrid,L+Ptgrid,ESS)mint=1∑TCtgrid​⋅(Ptgrid,L​+Ptgrid,ESS​)

Decision Variables:

  • PtPV,LPtPV,L​, PtWT,LPtWT,L​: Renewable power to load
  • PtPV,ESSPtPV,ESS​, PtWT,ESSPtWT,ESS​: Renewable power to ESS
  • PtESS,LPtESS,L​: ESS discharge to load
  • Ptgrid,LPtgrid,L​, Ptgrid,ESSPtgrid,ESS​: Grid power to load/ESS

Constraints:

  1. Power Balance:

PtPV,L+PtWT,L+PtESS,L+Ptgrid,L=PtLPtPV,L​+PtWT,L​+PtESS,L​+Ptgrid,L​=PtL

  1. Renewable Generation Limits:

PtPV,L+PtPV,ESS≤PtPVPtPV,L​+PtPV,ESS​≤PtPV​PtWT,L+PtWT,ESS≤PtWTPtWT,L​+PtWT,ESS​≤PtWT

  1. ESS Operational Limits:

−PmaxESS≤PtESS≤PmaxESS−PmaxESS​≤PtESS​≤PmaxESS​SOCmin≤SOCt≤SOCmaxSOCmin​≤SOCt​≤SOCmax

3.2 Lower Layer: Battery Lifespan Optimization

The lower layer uses a genetic algorithm to schedule individual energy storage battery operations, minimizing lifespan degradation:min⁡∑t=1T∑j=1NΔSt,jbatterymint=1∑Tj=1∑N​ΔSt,jbattery

Decision Variables:

  • Pj,tbatteryPj,tbattery​: Charge/discharge power of battery jj at time tt.

Constraints:

  1. Aggregate Power Matching:

∑j=1NPj,tbattery={PtESS,L,dischargingPtPV,ESS+PtWT,ESS+Ptgrid,ESS,chargingj=1∑NPj,tbattery​={PtESS,L​,PtPV,ESS​+PtWT,ESS​+Ptgrid,ESS​,​dischargingcharging​

  1. Individual Battery Limits:

−Pmaxbattery≤Pj,tbattery≤Pmaxbattery−Pmaxbattery​≤Pj,tbattery​≤Pmaxbattery​SOCminbattery≤SOCj,t≤SOCmaxbatterySOCminbattery​≤SOCj,t​≤SOCmaxbattery

4. Case Study and Results

4.1 Experimental Setup

A case study was conducted in a northeastern industrial park with 2 MW wind capacity, 1000 m² PV panels, and 120 energy storage batteries. Key parameters include:

ParameterValue
ESS Capacity (EESSEESS​)500 kWh
Max Charge/Discharge Rate±200 kW
TOU Pricing (Peak/Off-Peak)0.15/0.15/0.08 per kWh
Initial Battery Lifespan1 (per battery)

4.2 Performance Comparison

Economic Efficiency:

MetricDouble-Layer OptimizationSingle-Layer Optimization
Total Cost (30 days)$12,340$13,420
Cost Reduction8.12%

Energy Storage Battery Lifespan:

MetricDouble-Layer OptimizationSingle-Layer Optimization
Total Lifespan Loss0.721.22
Remaining Lifespan119.28118.78

Renewable Utilization:

SourceDouble-Layer OptimizationSingle-Layer Optimization
Wind/PV Contribution46.34%40.85%
Grid Reliance24.07%28.06%

The double-layer approach reduces grid dependency by 13.7% and enhances renewable utilization by 5.49%.

5. Conclusion

This paper presents a novel double-layer optimization framework for SGLS systems, addressing both economic efficiency and energy storage battery longevity. By decoupling grid cost minimization and battery lifespan optimization, the strategy achieves superior performance in real-world scenarios. Future work will explore dynamic weight adaptation for multi-objective optimization and scalability for larger grids.

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