Trajectory-Based Nonlinear Indices for Real-Time Monitoring and Quantification of Short-Term Voltage Stability
Mohammad Almomani, Muhammad Sarwar, Venkataramana Ajjarapu

TL;DR
This paper introduces novel trajectory-based indices utilizing Empirical Mode Decomposition and Lyapunov Exponents for rapid, graded, real-time assessment of short-term voltage stability, addressing both oscillations and delayed recovery.
Contribution
The proposed indices enable early detection and quantification of voltage stability issues within seconds, improving upon traditional methods by providing graded stability measures.
Findings
Detect stability within 0.6 seconds after a fault
Identify generator trips caused by over-excitation within 3 seconds
Effectively distinguish stable and unstable cases using derived thresholds
Abstract
Existing short term voltage stability (STVS) methods typically address either voltage oscillations or delayed voltage recovery; however, the coexistence of both phenomena has not been adequately covered in the literature. Moreover, existing real-time STVS assessment methods often provide only binary stability classifications. This paper proposes novel indices that enable early detection and quantify the degree of stability. The proposed method decomposes post-fault voltage trajectories using Empirical Mode Decomposition (EMD) into residual and oscillatory components. It then employs Lyapunov Exponents (LEs) to characterize the dynamic behavior of each component and evaluates the stability degree using Kullback Leibler (KL) divergence by comparing the LEs of each component with those of a predefined critical signal. The proposed indices assess oscillatory stability significantly faster…
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