Yiyun Yao’s research while affiliated with National Renewable Energy Laboratory and other places

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Publications (30)


Distribution System Blackstart and Restoration Using DERs and Dynamically Formed Microgrids
  • Article

January 2025

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13 Reads

IEEE Transactions on Smart Grid

Salish Maharjan

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Han Wang

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[...]

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Extreme weather events have led to long-duration outages in the distribution system (DS), necessitating novel approaches to blackstart and restore the system. Existing blackstart solutions utilize blackstart units to establish multiple microgrids (MGs), sequentially energize non-blackstart units, and restore loads. However, these approaches often result in isolated MGs. In DERs-aided blackstart, the continuous operation of these MGs is limited by the finite energy capacity of commonly used blackstart units like battery energy storage (BES)-based gridforming inverters (GFMIs). To address this issue, this article proposes a holistic blackstart and restoration framework that incorporates synchronization between dynamic MGs and the entire DS with the transmission grid (TG). To support synchronization, we leveraged virtual synchronous generator-based control for GFMIs to estimate their frequency response to load pick-up events using only initial/final quasi-steady-state points. Subsequently, a synchronization switching condition is developed to model synchronizing switches, aligning them seamlessly with a linearized branch flow problem. Finally, we designed a bottomup blackstart and restoration framework that considers the switching structure of the DS, energizing/synchronizing switches, DERs with grid-following inverters, and BES-based GFMIs with frequency security constraints. The proposed framework is validated in IEEE-123-bus system, considering cases with two and four GFMIs under various TG recovery instants.


Integrated Framework of Multisource Data Fusion for Outage Location in Looped Distribution Systems

January 2025

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2 Reads

IEEE Transactions on Smart Grid

Accurate outage location is essential for expediting post-outage power restoration, minimizing outage duration, and enhancing the resilience of distribution networks. With the advent of advanced metering infrastructure, data-driven outage location methods have significantly advanced beyond traditional approaches that rely on manual inspections. However, existing methods still face critical challenges, like reliance on single-source data, limited ability to handle partially observable systems or difficulties with loop networks. To the best of our knowledge, no single approach has comprehensively addressed all of these challenges at once. To this end, this paper proposes a comprehensive multisource data fusion framework for outage locations via probabilistic graph networks. The framework consists of three key phases. First, a novel method for reconstituting distribution networks with loops is developed, transforming looped networks into multiple radial subnetworks that retain all outage causalities of the original network. Second, Bayesian network (BN) models are established for each subnetwork, integrating multiple data sources and network structures. Finally, a joint Gibbs sampling mechanism, featuring forward and backward information flow, is designed to merge data from separate BN models and maximize the utilization of limited evidence, ensuring accurate outage location identification. The framework was validated on two modified public test systems, and comparative studies confirmed its effectiveness.


DERs-Aided Blackstart and Load Restoration Framework for Distribution Systems Considering Synchronization and Frequency Security Constraints

November 2024

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13 Reads

Extreme weather events have led to long-duration outages in the distribution system (DS), necessitating novel approaches to blackstart and restore the system. Existing blackstart solutions utilize blackstart units to establish multiple microgrids, sequentially energize non-blackstart units, and restore loads. However, these approaches often result in isolated microgrids. In DER-aided blackstart, the continuous operation of these microgrids is uncertain due to the finite energy capacity of commonly used blackstart units, such as battery energy storage (BES)-based grid-forming inverters (GFMIs). To address this issue, this article proposes a holistic blackstart and restoration framework that incorporates synchronization between microgrids and the entire DS with the transmission grid (TG). To support synchronization, we leveraged virtual synchronous generator-based control for GFMIs to estimate their frequency response to load pick-up events using only initial/final quasi-steady-state points. Subsequently, a synchronization switching condition was developed to model synchronizing switches, aligning them seamlessly with a linearized branch flow problem. Finally, we designed a bottom-up blackstart and restoration framework that considers the switching structure of the DS, energizing/synchronizing switches, DERs with grid-following inverters, and BES-based GFMIs with frequency security constraints. The proposed framework is validated in IEEE-123-bus system, considering cases with two and four GFMIs under various TG recovery instants.


Online Model-Free DER Dispatch Via Adaptive Voltage Sensitivity Estimation and Chance Constrained Programming

November 2024

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43 Reads

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1 Citation

Power Systems, IEEE Transactions on

This paper proposes an online data-driven distributed energy resource management system (DERMS) for distribution system optimal DER dispatch as well as voltage regulation. The key innovation is to leverage the Local Sensitivity Factor (LSF) for transforming the DER control into a computationally efficient linear programming (LP) problem. By taking real-time measurements, the estimation of LSF eliminates the need for an accurate distribution system model as well as full nodal load information, which is difficult to achieve in practice. A robust recursive least squares method is also developed to ensure the robust estimation of LSF, which is initialized using reasonable values from model-derived LSFs. This allows the system to adapt to changing operational conditions effectively. A scenario-based, chance-constrained framework is further employed to ensure voltage remains within acceptable limits in the presence of measurement and estimation uncertainties. Test results on a real-world, 759-node distribution network located in western Colorado, U.S., validate the effectiveness and robustness of the proposed control approach and demonstrate its superior performance as compared to alternative methods.








Citations (9)


... Citations in Absolute Numbers or as Percentage of the Total Citations Collected % Intensity Rations (Per Basis of the Lowest-Documented Field of Cluster #a) a Lu et al., 2023; Çiçek, 2023; Ren et al., 2023; Virji et al., 2020; Maghami et al., 2020; Parra et al., 2019; Cho et al., 2018; Rosen and Koohi-Fayegh, 2016; Özden and Tari, 2015; Lanjewar et al., 2014; Contreras and Posso, al., 2023; Zhao et al., 2023; Sun et al., 2023; Alanazi et al., 2022; Dong et al., 2022; Schrotenboer et al., 2022; Marocco et al., 2021; Zhang et al., 2021; Wang et al., 2021; Onwe et al., 2020; Manilov, 2019; Zhang et al., 2019a; Zhang et al., 2019b; Alavi et al., 2017; Ren et al., 2017; Lacko et al., 2014; Patricio et al., 2012; Aguado et al., 2009[15][16][17][18][19][20][21][22][23][24][25][26][27][28][29][30][31][32] ...

Reference:

Literature Review of Hydrogen Energy Systems and Renewable Energy Sources
A Hydrogen Load Modeling Method for Integrated Hydrogen Energy System Planning
  • Citing Conference Paper
  • January 2023

... The model's predictive performance is evaluated across different seasons. Readers can find an in-depth analysis in the related studies [16][17][18][19][20]. ...

Multi-Task Reinforcement Learning for Distribution System Voltage Control With Topology Changes
  • Citing Article
  • Full-text available
  • December 2022

IEEE Transactions on Smart Grid

... The resilience triangular or resilience trapezoidal models are commonly used to describe these changes before, during, and after a disturbance. Resilience evaluation indicators include two aspects, which are impact degree and change rate of system performance [8][9][10][11][12][13][14][15][16]. In [8], the ratio of the resilience of a triangular or trapezoidal area after an event to the area of the target performance curve was used as an indicator, while in [9], the delivery function, which can be the network, connectivity, flow, or delay of the system, was defined for resilience (1) This study extends traditional power system modeling by incorporating the effects of renewable energy. ...

Quantitative Metrics for Grid Resilience Evaluation and Optimization
  • Citing Article
  • January 2022

IEEE Transactions on Sustainable Energy

... In that sense, TM could also be considered a variation of energy markets, as it adopts market-based energy management mechanisms [15]. Furthermore, TM could extend conventional market concepts to harvest connected and aggregated flexibilities, known as grid-edge flexibilities [16], in modern networks. However, handling the high scale of resources is challenging in the TM market-based structure [3]. ...

Unleash Values From Grid-Edge Flexibility: An overview, experience, and vision for leveraging grid-edge distributed energy resources to improve grid operations
  • Citing Article
  • December 2022

IEEE Electrification Magazine

... Energy storage units and EVs are effective methods to decrease the curtailment of DGs by storing excess power, especially when the demand is low. A microgrid with hydrogen storage units is introduced in [102], and the DDPG algorithm is used as a control agent to reduce the curtailment of PV generation. Simulation results showed that the DRL agent reduced the operation and emission cost by 5% when compared with the genetic algorithm. ...

Multi-Agent Deep Reinforcement Learning for Realistic Distribution System Voltage Control using PV Inverters
  • Citing Conference Paper
  • July 2022

... A MG framework is proposed in [99] to optimize PV's SIs for voltage regulations and the real power curtailment through SAC. In [100] and [101], a multi-agent SAC (MASAC) algorithm-based real-time VVO is proposed to regulate SIs for PVs and WTs. ...

Data-Driven Distribution System Coordinated PV Inverter Control Using Deep Reinforcement Learning
  • Citing Conference Paper
  • December 2021

... Coordinated voltage control strategies that involve communication to provide inverters with information beyond what is available at the PCC have been proposed in [17,[22][23][24][25][26]. The level of coordination employed varies amongst these methodologies, leading to a diversity of attained benefits. ...

Coordinated Inverter Control to Increase Dynamic PV Hosting Capacity: A Real-Time Optimal Power Flow Approach
  • Citing Article
  • August 2021

IEEE Systems Journal