Towards Highly Scalable Runtime Models with History

04/07/2020
by   Lucas Sakizloglou, et al.
0

Advanced systems such as IoT comprise many heterogeneous, interconnected, and autonomous entities operating in often highly dynamic environments. Due to their large scale and complexity, large volumes of monitoring data are generated and need to be stored, retrieved, and mined in a time- and resource-efficient manner. Architectural self-adaptation automates the control, orchestration, and operation of such systems. This can only be achieved via sophisticated decision-making schemes supported by monitoring data that fully captures the system behavior and its history. Employing model-driven engineering techniques we propose a highly scalable, history-aware approach to store and retrieve monitoring data in form of enriched runtime models. We take advantage of rule-based adaptation where change events in the system trigger adaptation rules. We first present a scheme to incrementally check model queries in the form of temporal logic formulas which represent the conditions of adaptation rules against a runtime model with history. Then we enhance the model to retain only information that is temporally relevant to the queries, therefore reducing the accumulation of information to a required minimum. Finally, we demonstrate the feasibility and scalability of our approach via experiments on a simulated smart healthcare system employing a real-world medical guideline.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
08/10/2020

A Scalable Querying Scheme for Memory-efficient Runtime Models with History

Runtime models provide a snapshot of a system at runtime at a desired le...
research
05/09/2018

Efficient Utility-Driven Self-Healing Employing Adaptation Rules for Large Dynamic Architectures

Self-adaptation can be realized in various ways. Rule-based approaches p...
research
05/17/2018

Adaptation and Abstract Runtime Models

Runtime adaptability is often a crucial requirement for today's complex ...
research
05/20/2020

Improving Scalability and Reward of Utility-Driven Self-Healing for Large Dynamic Architectures

Self-adaptation can be realized in various ways. Rule-based approaches p...
research
05/09/2018

Towards Linking Adaptation Rules to the Utility Function for Dynamic Architectures

To benefit from utility-driven and rule-based approaches to self-adaptat...
research
07/06/2018

z-TORCH: An Automated NFV Orchestration and Monitoring Solution

Autonomous management and orchestration (MANO) of virtualized resources ...
research
03/29/2018

Stream Runtime Monitoring on UAS

Unmanned Aircraft Systems (UAS) with autonomous decision-making capabili...

Please sign up or login with your details

Forgot password? Click here to reset