Mixture Distributions in Autonomous Decision-Making for Industry 4.0

Author(s):  
Christopher Slon ◽  
Vijitashwa Pandey ◽  
Sam Kassoumeh
Author(s):  
Richard Ashcroft

This chapter discusses the ethics of depression from a personal perspective. The author, an academic who has worked in the field of medical ethics or bioethics, has suffered episodes of depression throughout his life, some lasting several months. Here he shares a few quite informal things about how these two facts about him are connected. He first considers the paradigm of autonomy and autonomous decision-making, as well as the problem with functional accounts of autonomy with regard to depression. He then reflects on an approach to ethics and depression that involves thinking about the ethics of being depressed. He also highlights two aspects of the ‘ethics of depression’: treatment and the ethical obligation to talk about it.


Energies ◽  
2021 ◽  
Vol 14 (4) ◽  
pp. 969
Author(s):  
Eric Cayeux ◽  
Benoît Daireaux ◽  
Adrian Ambrus ◽  
Rodica Mihai ◽  
Liv Carlsen

The drilling process is complex because unexpected situations may occur at any time. Furthermore, the drilling system is extremely long and slender, therefore prone to vibrations and often being dominated by long transient periods. Adding the fact that measurements are not well distributed along the drilling system, with the majority of real-time measurements only available at the top side and having only access to very sparse data from downhole, the drilling process is poorly observed therefore making it difficult to use standard control methods. Therefore, to achieve completely autonomous drilling operations, it is necessary to utilize a method that is capable of estimating the internal state of the drilling system from parsimonious information while being able to make decisions that will keep the operation safe but effective. A solution enabling autonomous decision-making while drilling has been developed. It relies on an optimization of the time to reach the section total depth (TD). The estimated time to reach the section TD is decomposed into the effective time spent in conducting the drilling operation and the likely time lost to solve unexpected drilling events. This optimization problem is solved by using a Markov decision process method. Several example scenarios have been run in a virtual rig environment to test the validity of the concept. It is found that the system is capable to adapt itself to various drilling conditions, as for example being aggressive when the operation runs smoothly and the estimated uncertainty of the internal states is low, but also more cautious when the downhole drilling conditions deteriorate or when observations tend to indicate more erratic behavior, which is often observed prior to a drilling event.


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