Submitted:
10 April 2026
Posted:
14 April 2026
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Abstract
Keywords:
1. Introduction
2. Distribution-Matching Likelihood-Free Importance Sampling
2.1. Problem Formulation
2.2. Relation to ABC-Based PPF
2.3. DM-LFIS: Discrepancy, Weights, and Proposals
2.4. Residual Resampling
| Algorithm 1: DM-LFIS |
|
1 Sample in (6).
2 Simulate .
4 Residual-resample [10] to obtain .
|
3. Numerical Results and Discussion
3.1. Distributional Accuracy of State Variables
3.2. Residual Error Analysis
3.3. Computational Efficiency
4. Conclusion
References
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| 1 | It is available at http://www.pserc.cornell.edu/matpower/
|
| 2 | Relative errors were computed with respect to the MCS reference using the metrics and [8], where and denote the relative error of the mean and standard deviation, respectively. Here, and were obtained from MCS, while and correspond to the estimates computed by ABC methods and proposed method. |
| 3 | All simulations were conducted on an Intel Core i7 PC with a GHz processor. |

| Method | IEEE 6 | IEEE 39 | IEEE 118 | ||||
|---|---|---|---|---|---|---|---|
| ABC | |||||||
| JABC | 0.0714 | 0.1103 | 0.0236 | ||||
| 0.0348 | 0.1184 | 0.7064 | 0.4557 | 0.0719 | 3.3562 | ||
| DM-LFIS | 0.3022 | 2.6504 | 3.7770 | ||||
| Computation time [s] | MCS | JABC | ABC | DM-LFIS |
|---|---|---|---|---|
| IEEE-6 | 5.2431 | 0.4572 | 17.271 | 4.0863 |
| IEEE-39 | 7.0106 | 1.2812 | 16.671 | 5.4375 |
| IEEE-118 | 9.1253 | 2.5895 | 20.752 | 8.5739 |
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