Environmental conditions of ocean are crucial for predicting harmful events, which gives an impact on marine ecosystems and human well-being. Various threats, such as ocean acidification, harmful algal blooms, and coral bleaching, need early monitoring of variables, including temperature, acidity, pollution levels, and biodiversity, to mitigate the adverse effects. This proactive approach enables conservation efforts that safeguard marine life, fisheries, and coastal communities while promoting sustainable ocean stewardship. Deep learning techniques play a pivotal role in this endeavour by processing underwater acoustic recordings. It gives accurate results to identify marine species, detect changes in their behavior, and predict environmental conditions based on sound patterns. The proposed work suggests that, combination of Long Short Term Memory(LSTM) and Graphical Neural Network(GNN) which is used to predict the harmful changes over the ocean. LSTM and GNN architectures establish an indirect relationship, shedding light on emerging trends and potential threats.