This paper presents an extension to the Hybrid Information and Plan Consensus Algorithm (HIPC) that accounts for imperfect situational awareness (SA). This algorithm uses implicit coordination to plan for a subset of the team on-board each agent, then uses plan consensus to satisfy assignment constraints. By combining the ideas of implicit coordination and local plan consensus, the algorithm empirically reduces the convergence time for distributed task allocation problems. The contribution of this work is that it extends previous results to account for the likely possibility of imperfect situational awareness across the team. This is accomplished by tracking when predictions are incorrect and removing offending predictions if they are hindering algorithmic convergence. Empirical results are provided to demonstrate that this new approach allows the use of inconsistent situational awareness to improve convergence speed.