This paper presents a novel approach for efficient temporal association rule mining (ETAR), which improves upon traditional methods by considering time-varying characteristics of data. The proposed ETAR algorithm allows for the identification of temporal features with interesting patterns and requires only a single scan of the database, significantly reducing execution time. Experimental results demonstrate that ETAR can discover many time-related association rules that earlier methods may miss.