The sleep staging model vEpiSleepNet consists of four modules: sleep feature extraction, cascaded multi-layer dilated convolution encoding, temporal context encoding, and MLP classification. Nineteen signal channels preserve signal integrity, distinguishing it from previous models employing fewer than 10 channels. This study used Peking Union Medical College Hospital (PUMCH) dataset, containing 152 patients and 140h EEG data with 3763 wake, 3219 N1, 5728 N2, 3253 N3 and 875 rapid eye movement (REM) 30-second segments. Five-fold cross-validation was applied. Several classic EEG networks were compared: DeepSleepNet, SeqSleepNet, AttnSleep, MMASleepNet, and SleepTransformer. The model was further developed and validated on two classic benchmarks to demonstrate its performance consistency.