Dion Mariyanayagam

and 4 more

This paper presents the Autonomous Local Air Quality Monitoring System (ALAMS), an IoT-enabled, power-efficient, and fully autonomous platform for real-time and predictive air-quality assessment in smart cities. ALAMS operates through solar-powered microcontroller units equipped with a comprehensive suite of gas and particulate sensors, capable of monitoring key pollutants such as PM 2. 5, PM 10, CO 2, SO 2, NO, CH 4, NH 3, and O 3, along with temperature, humidity, pressure, and light levels. A major advancement in this study lies in the development of a Physics-Informed and Explainable Convolutional Neural Network–Transformer (PI-CNN-T) model optimised by Multi-Objective Bayesian Optimisation (MOBO). Unlike conventional CNN-BO architectures, the proposed model integrates physical dispersion constraints derived from Gaussian plume equations directly into the training process, ensuring physically consistent and realistic pollutant forecasts. The hybrid CNN–Transformer structure captures both spatial and temporal pollutant dynamics, while SHAP-based feature attribution and attention visualisation enhance interpretability and model transparency. Furthermore, the MOBO framework jointly optimises prediction accuracy and energy efficiency, enabling deployment on low-power IoT nodes. When evaluated on real-world data collected in London, the PI-CNN-T achieved an R 2 of 0.972 and an RMSE of 18.6 µg/m 3 for PM 2. 5 prediction, outperforming baseline CNN-BO models by 14 percent. The proposed architecture therefore represents a significant methodological and practical advance, combining domain-informed learning, explainable AI, and computational optimisation into a unified framework for sustainable environmental monitoring and healthcare applications in smart cities.

Sandra Fernando

and 2 more

Many software development methodologies introduced to date place users at the centre of development process. Although the user is an important asset in the software development cycle however the user-centred approach is not sufficient to develop a software product that is structurally robust and reliable. User involvement in the development process does not always guarantee resilience and a more efficient design. To address this a hybrid-based software development paradigm is proposed here where the software development cycle includes a grammar model-based compiler with user-centred approach. The efficacy of the proposed system is tested with the development of an innovative computer-aided drawing technology (SETUP09) for blind and visually impaired people and the results are compared with an existing non-hybrid-based drawing software (IC2D). The results of this study confirm SETUP09 improves user satisfaction and provides abstract and concrete level system flexibility. Provided here are guidelines of the proposed hybrid approach for software development based on a formal approach. This hybrid approach enables the software designer to evaluate the software semantics before user scrutinization. The benefits of the approach include the facilitation of alternate development pathways affording the software designer the flexibility to amend the software without incurring significant technical challenges. In fact, the proposed approach enables the creation of a structural design that is independent from the development pathways. This approach should ease the time constraint in product development and resource constraints.