Stuck pipe incidents significantly disrupt drilling operations and cause major economic losses. Traditional physics-based models for stuck pipe prediction and analysis are subjective with large errors,while intelligent models suffer from high false alarm rates and low interpretability. To address these issues,an unsupervised stuck pipe risk evaluation method based on fuzzy mathematics was proposed. This approach involves:1) establishing a tubular mechanics model to quantify wellbore friction characteristics;2) constructing a deep autoencoder to detect abnormal parameters through reconstruction error analysis;and 3) developing a dual-factor membership function for a comprehensive fuzzy evaluation of friction coefficient trends and reconstruction errors. This method avoids the dependence of the conventional supervised learning on labeled data,integrates the interpretability of mechanistic models with the generalization ability of data-driven models,and creates a physics-constrained intelligent risk assessment framework. Tests using real drilling data show that this model effectively identifies early signs of stuck pipe. It improves warning accuracy by 7.1%,compared to the single-parameter methods,reduces false alarms,and delivers a 30-minute-earlier alert. The proposed method provides a promising new technique for predicting downhole complex issues and possesses significant application potential.