The proliferation of uncertain spatiotemporal data has led to an increasing demand for fuzzy spatiotemporal knowledge modeling in various applications. However, performing multihop query modeling on incomplete fuzzy spatiotemporal knowledge graphs (KGs) poses significant challenges. Recently, embedding-based multihop KG querying approaches have gained attention. Yet, these approaches often overlook KG uncertainty and spatiotemporal sensitivity, resulting in the neglect of fuzzy spatiotemporal information during multihop path reasoning. To address these challenges, we propose an embedding-based multihop query model for fuzzy spatiotemporal KG. We use quaternion to jointly embed spatiotemporal entities, and relations are represented as rotations from spatiotemporal subject to object. We incorporate uncertainty by the scoring function's bias factor, allowing for relaxation embedding. This approach facilitates the learning of a richer representation of fuzzy spatiotemporal KGs in vector space. By exploiting the inherent noncommutative compositional pattern of quaternions, we construct more accurate multihop paths within fuzzy spatiotemporal KGs, thus improving path reasoning performance. To evaluate the effectiveness of our model, we conduct experiments on two fuzzy spatiotemporal KG datasets, focusing on link prediction and path query answering. Results show that our proposed method significantly outperforms several state-of-the-art baselines in terms of performance metrics.