19 research outputs found
Restoration of an active MV distribution grid with a battery ESS: A real case study
In order to improve power system operation, Battery Energy Storage Systems (BESSs) have been installed in high voltage/medium voltage stations by Distribution System Operators (DSOs) around the world. Support for restoration of MV distribution networks after a blackout or HV interruption is among the possible new functionalities of BESSs. With the aim to improve quality of service, the present paper investigates whether a BESS, installed in the HV/MV substation, can improve the restoration process indicators of a distribution grid. As a case study, an actual active distribution network of e-distribuzione, the main Italian DSO, has been explored. The existing network is located in central Italy. It supplies two municipalities of approximately 10,000 inhabitants and includes renewable generation plants. Several configurations are considered, based on: the state of the grid at blackout time; the BESS state of charge; and the involvement of Dispersed Generation (DG) in the restoration process. Three restoration plans (RPs) have been defined, involving the BESS alone, or in coordination with DG. A MATLAB®/Simulink® program has been designed to simulate the restoration process in each configuration and restoration plan. The results show that the BESS improves restoration process quality indicators in different simulated configurations, allowing the operation in controlled island mode of parts of distribution grids, during interruptions or blackout conditions. The defined restoration plans set the priority and the sequence of controlled island operations of parts of the grid to ensure a safe and better restoration. In conclusion, the results demonstrate that a BESS can be a valuable element towards an improved restoration procedure
A Novel Feeder-level Microgrid Unit Commitment Algorithm Considering Cold-load Pickup, Phase Balancing, and Reconfiguration
This paper presents a novel 2-stage microgrid unit commitment (Microgrid-UC)
algorithm considering cold-load pickup (CLPU) effects, three-phase load
balancing requirements, and feasible reconfiguration options. Microgrid-UC
schedules the operation of switches, generators, battery energy storage
systems, and demand response resources to supply 3-phase unbalanced loads in an
islanded microgrid for multiple days. A performance-based CLPU model is
developed to estimate additional energy needs of CLPU so that CLPU can be
formulated into the traditional 2-stage UC scheduling process. A per-phase
demand response budget term is added to the 1st stage UC objective function to
meet 3-phase load unbalance limits. To reduce computational complexity in the
1st stage UC, we replace the spanning tree method with a feasible
reconfiguration topology list method. The proposed algorithm is developed on a
modified IEEE 123-bus system and tested on the real-time simulation testbed
using actual load and PV data. Simulation results show that Microgrid-UC
successfully accounts for CLPU, phase imbalance, and feeder reconfiguration
requirements.Comment: 10 pages, submitted to IEEE Transactions on Smart Gri
A Parallel Fast-Track Service Restoration Strategy Relying on Sectionalized Interdependent Power-Gas Distribution Systems
In the distribution networks, catastrophic events especially those caused by natural disasters can result in extensive damage that ordinarily needs a wide range of components to be repaired for keeping the lights on. Since the recovery of system is not technically feasible before making compulsory repairs, the predictive scheduling of available repair crews and black start resources not only minimizes the customer downtime but also speeds up the restoration process. To do so, this paper proposes a novel three-stage buildup restoration planning strategy to combine and coordinate repair crew dispatch problem for the interdependent power and natural gas systems with the primary objective of resiliency enhancement. In the proposed model, the system is sectionalized into autonomous subsystems (i.e., microgrid) with multiple energy resources, and then concurrently restored in parallel considering cold load pick-up conditions. Besides, topology refurbishment and intentional microgrid islanding along with energy storages are applied as remedial actions to further improve the resilience of interdependent systems while unpredicted uncertainties are addressed through stochastic/IGDT method. The theoretical and practical implications of the proposed framework push the research frontier of distribution restoration schemes, while its flexibility and generality support application to various extreme weather incidents.©2022 IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for all other uses, in any current or future media, including reprinting/republishing this material for advertising or promotional purposes, creating new collective works, for resale or redistribution to servers or lists, or reuse of any copyrighted component of this work in other works.fi=vertaisarvioitu|en=peerReviewed
Cyber-physical interdependent restoration scheduling for active distribution network via ad hoc wireless communication
This paper proposes a post-disaster cyber-physical interdependent restoration
scheduling (CPIRS) framework for active distribution networks (ADN) where the
simultaneous damages on cyber and physical networks are considered. The ad hoc
wireless device-to-device (D2D) communication is leveraged, for the first time,
to establish cyber networks instantly after the disaster to support ADN
restoration. The repair and operation crew dispatching, the remote-controlled
network reconfiguration and the system operation with DERs can be effectively
coordinated under the cyber-physical interactions. The uncertain outputs of
renewable energy resources (RESs) are represented by budget-constrained
polyhedral uncertainty sets. Through implementing linearization techniques on
disjunctive expressions, a monolithic mixed-integer linear programming (MILP)
based two-stage robust optimization model is formulated and subsequently solved
by a customized column-and-constraint generation (C&CG) algorithm. Numerical
results on the IEEE 123-node distribution system demonstrate the effectiveness
and superiorities of the proposed CPIRS method for ADN
A Novel Decomposition Solution Approach for the Restoration Problem in Distribution Networks
The distribution network restoration problem is by nature a mixed integer and
non-linear optimization problem due to the switching decisions and Optimal
Power Flow (OPF) constraints, respectively. The link between these two parts
involves logical implications modelled through big-M coefficients. The presence
of these coefficients makes the relaxation of the mixed-integer problem using
branch-and-bound method very poor in terms of computation burden. Moreover,
this link inhibits the use of classical Benders algorithm in decomposing the
problem because the resulting cuts will still depend on the big-M coefficients.
In this paper, a novel decomposition approach is proposed for the restoration
problem named Modified Combinatorial Benders (MCB). In this regard, the
reconfiguration problem and the OPF problem are decomposed into master and sub
problems, which are solved through successive iterations. In the case of a
large outage area, the numerical results show that the MCB provides, within a
short time (after a few iterations), a restoration solution with a quality that
is close to the proven optimality when it can be exhibited