8 research outputs found

    Software Development Support for Shared Sensing Infrastructures: A Generative and Dynamic Approach

    Get PDF
    International audienceSensors networks are the backbone of large sensing infras-tructures such as Smart Cities or Smart Buildings. Classical approaches suffer from several limitations hampering developers' work (e.g., lack of sensor sharing, lack of dynamicity in data collection policies, need to dig inside big data sets, absence of reuse between implementation platforms). This paper presents a tooled approach that tackles these issues. It couples (i) an abstract model of developers' requirements in a given infrastructure to (ii) timed automata and code generation techniques, to support the efficient deployment of reusable data collection policies on different infrastructures. The approach has been validated on several real-world scenarios and is currently experimented on an academic campus

    A security policy enforcement framework for controlling IoT tenant applications in the edge

    No full text
    In the context of edge computing, IoT-as-a-Service (IoTaaS) with IoT data hubs and execution services allow IoT tenant applications (apps) to be executed next to IoT devices, enabling edge analytics and controls. However, this brings up new security challenges on controlling tenant apps in IoTaaS, whilst the great potential of IoTaaS can only be realized by flexible security mechanisms to govern such applications. In this paper, we propose a Model-Driven Security policy enforcement framework, named MDSIoT, for IoT tenant apps deployed in edge servers. This framework allows execution policies specified at the model level and then transformed into the code that can be deployed for policy enforcement at runtime. Moreover, our approach supports for the interoperability of IoT tenant apps when deployed in the edge to access IoTaaS services. The interoperability is enabled by an intermediate proxy layer (gatekeeper) that abstracts underlying communication protocols to the different IoTaaS services from IoT tenant apps. Therefore, our approach supports different IoT tenant apps to be deployed and controlled automatically, independently from their technologies, e.g. programming languages. We have developed a proof-of-concept of the proposed gatekeepers based on ThingML, derived from execution policies. Thanks to the ThingML tool, we can generate platform-specific code of gatekeepers that can be deployed in the edge for controlling IoT tenant apps based on the execution policies
    corecore