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Innovation, Risk, Agility, and Learning, Viewed as Optimal Control & Estimation
Author(s) -
Schindel William D. Bill
Publication year - 2017
Publication title -
incose international symposium
Language(s) - English
Resource type - Journals
ISSN - 2334-5837
DOI - 10.1002/j.2334-5837.2017.00420.x
Subject(s) - agile software development , computer science , control (management) , process (computing) , exposition (narrative) , risk analysis (engineering) , management science , artificial intelligence , engineering , software engineering , art , literature , operating system , medicine
This paper summarizes how a well‐understood problem—optimal control and estimation in “noisy” environments—provides a framework to advance understanding of a well‐known but less well‐mastered problem—system innovation life cycles and management of decision risks and learning. The ISO15288 process framework and its exposition in the INCOSE SE Handbook describe system development and other life cycle processes. Concerns about improving the performance of processes in dynamic, uncertain, and changing environments are partly addressed by “agile” systems engineering approaches. Both are typically described in the procedural language of business processes, so it is not always clear whether the different approaches are fundamentally at odds, or just different sides of the same coin. Describing the target system, its environment, and the life cycle management processes using models of dynamical systems allows us to apply earlier technical tools, such as the theory of optimal control in noisy environments, to emerging innovation methods.