Nodal Capacity Expansion Planning with Flexible Large-Scale Load Siting
By: Tomas Valencia Zuluaga, Simon Pang, Jean-Paul Watson
Potential Business Impact:
Builds smarter power grids for big energy users.
We propose explicitly incorporating large-scale load siting into a stochastic nodal power system capacity expansion planning model that concurrently co-optimizes generation, transmission and storage expansion. The potential operational flexibility of some of these large loads is also taken into account by considering them as consisting of a set of tranches with different reliability requirements, which are modeled as a constraint on expected served energy across operational scenarios. We implement our model as a two-stage stochastic mixed-integer optimization problem with cross-scenario expectation constraints. To overcome the challenge of scalability, we build upon existing work to implement this model on a high performance computing platform and exploit scenario parallelization using an augmented Progressive Hedging Algorithm. The algorithm is implemented using the bounding features of mpisppy, which have shown to provide satisfactory provable optimality gaps despite the absence of theoretical guarantees of convergence. We test our approach to assess the value of this proactive planning framework on total system cost and reliability metrics using realistic testcases geographically assigned to San Diego and South Carolina, with datacenter and direct air capture facilities as large loads.
Similar Papers
Capacity Expansion Planning under Uncertainty subject to Expected Energy Not Served Constraints
Systems and Control
Plans power grids to avoid blackouts cheaper.
From Zonal to Nodal Capacity Expansion Planning: Spatial Aggregation Impacts on a Realistic Test-Case
Optimization and Control
Makes power grid plans more accurate.
Risk-Aware Planning of Power Distribution Systems Using Scalable Cloud Technologies
Systems and Control
Plans power grids for electric cars and solar.