Modeling and management of usage-aware distributed datasets for global Smart City Application Ecosystems
نویسندگان
چکیده
The ever-growing amount of data produced by and in today’s smart cities offers significant potential for novel applications created by city stakeholders as well as third parties. Current smart city application models mostly assume that data is exclusively managed by and bound to its original application and location.We argue that smart city datamust not be constrained to such data silos so that future smart city applications can seamlessly access and integrate data frommultiple sources across multiple cities. In this paper, we present a methodology and toolset to model available smart city data sources and enable efficient, distributed data access in smart city environments. We introduce a modeling abstraction to describe the structure and relevant properties, such as security and compliance constraints, of smart city data sources along with independently accessible subsets in a technology-agnostic way. Based on this abstraction, we present a middleware toolset for efficient and seamless data access through autonomous relocation of relevant subsets of available data sources to improve Quality of Service for smart city applications based on a configurable mechanism. We evaluate our approach using a case study in the context of a distributed city infrastructure decision support system and show that selective relocation of data subsets can significantly reduce application response times. Subjects Distributed and Parallel Computing, Software Engineering
منابع مشابه
Non-Parametric Bayesian Rejuvenation of Smart-City Participation through Context-aware Internet-of-Things (IoT) Management
Tweaking citizen participation is vital in promoting Smart City services. However, conventional practices deficit sufficient realization of personal traits despite socio-economic promise. The recent trend of IoT-enabled smart-objects/things and personalized services pave the way for context-aware services. Eventually, the aim of this paper is to develop a context-aware model in predicting parti...
متن کاملTowards Trust-Aware and Self-adaptive Systems
The Future Internet (FI) comprises scenarios where many heterogeneous and dynamic entities must interact to provide services (e.g., sensors, mobile devices and information systems in smart city scenarios). The dynamic conditions under which FI applications must execute call for selfadaptive software to cope with unforeseeable changes in the application environment. Software engineering currentl...
متن کاملAn Application Framework for a Situation-Aware System Support for Smart Spaces
Despite a considerable research effort towards system support for smart spaces, in recent years we have been witnessing a growing perception about a persistent gap between the promises of the area and its real achievements. We are investigating a situation-aware system support for smart spaces that builds on a new set of assumptions and design principles, based on user-controlled associations b...
متن کاملA Spatial Programming Model for Real Global Smart Space Applications
Global smart spaces are intended to provide their inhabitants with context-aware access to pervasive services and information relevant to large geographical areas. Transportation is one obvious domain for such global smart spaces since applications can be built to exploit the variety of sensor-rich systems that have been deployed to support urban traffic control and highway management as well a...
متن کاملDecentralized and Embedded Management for Smart Buildings
Future buildings will be smart to support personalized people comfort and building energy efficiency as well as safety, emergency, and context-aware information exchange scenarios. In this work we propose a decentralized and embedded architecture based on agents and wireless sensor and actuator networks for enabling efficient and effective management of buildings. The main purpose of the agent-...
متن کاملذخیره در منابع من
با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید
عنوان ژورنال:
- PeerJ Computer Science
دوره 3 شماره
صفحات -
تاریخ انتشار 2017