馬 超, 黎定仕
(西南交通大學數學學院,四川成都610031)
微分積分方程穩定性的問題具有其特定的物理意義,許多學者對其進行了深入的探究[1-6].微分積分方程在多個科學領域中,如控制理論、生物、經濟、醫學等都會遇見,考慮其后效反應或者時滯狀態[7-8]已經成為了必要.特別地,人們常常用微分積分方程來描述具有遺傳性質的模型.而在這些領域中常見的時滯現象包括常數時滯和變量時滯[9-14],但是由于存在大量軸突大小和長度類似的路徑,微分積分方程常常會有空間上的外延性.于是,會有沿著這些路徑的傳導速度和傳播時滯的不同的現象產生.在這種情況下,信號的傳播不再是瞬間的,也不能用離散時滯來模擬,從而就出現了一種更為合適的描述,即連續的分布式時滯.
本文研究如下非自治微分積分方程








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