The Himalayan region, particularly Nepal, is highly susceptible to frequent and severe seismic activity, underscoring the urgent need for ro
The Himalayan region, particularly Nepal, is highly susceptible to frequent and severe seismic activity, underscoring the urgent need for robust earthquake forecasting models. This study introduces a suite of time-scaled Epidemic-Type Aftershock Sequence (ETAS) models tailored for earthquake forecasting in Nepal, leveraging seismic data from 2000 to 2020. By incorporating alternative time-scaling approaches - such as calibration, proportional hazards, log-linear, and power time scales - the models capture nuanced temporal patterns of aftershocks, improving event classification between background and triggered occurrences. We evaluate model performance under various assumptions of earthquake magnitude distributions (exponential, gamma, and radially symmetric) and employ optimization techniques including the Davidon-Fletcher-Powell algorithm and Iterative Stochastic De-clustering. The results reveal that time-scaling significantly enhances model interpretability and predictive accuracy, with the ISDM-based ETAS model achieving the best fit. This work not only deepens the statistical understanding of earthquake dynamics in Nepal but also lays a foundation for implementing more effective early warning systems in seismically active regions. Comment: 11 pages, 4 figures, Accepted for publication as a chapter in the Asset Analytics Book Series, Springer