%0 Journal Article %T Robust stability of Boolean networks with data loss and disturbance inputs. %A Wang X %A Xia J %A Feng JE %A Fu S %J Neural Netw %V 179 %N 0 %D 2024 Jul 2 %M 38996690 %F 9.657 %R 10.1016/j.neunet.2024.106504 %X This study discusses the robust stability problem of Boolean networks (BNs) with data loss and disturbances, where data loss is appropriately described by random Bernoulli distribution sequences. Firstly, a BN with data loss and disturbances is converted into an algebraic form via the semi-tensor product (STP) technique. Accordingly, the original system is constructed as a probabilistic augmented system, based on which the problem of stability with probability one for the original system becomes a set stability with probability one for the augmented system. Subsequently, certain criteria are proposed for the robust stability of the systems. Moreover, an algorithm is developed to verify the robust set stability of the augmented system based on truth matrices. Finally, the validity of the obtained results is demonstrated by an illustrative example.