A Simulation Modeling Approach for Planning and Costing Jail Diversion Programs for Persons with Mental Illness

Author(s):  
David Hughes
2012 ◽  
Vol 39 (4) ◽  
pp. 434-446 ◽  
Author(s):  
David Hughes ◽  
Henry J. Steadman ◽  
Brian Case ◽  
Patricia A. Griffin ◽  
H. Stephen Leff

Author(s):  
Merrill Rotter ◽  
Virginia Barber-Rioja

Decreasing the number of individuals with mental illness in the criminal justice system remains a public mental health priority – one that has even reached the U.S. Supreme Court. Diverting individuals with mental illness from jail or prison decreases their exposure to that traumatic environment and addresses security concerns of corrections professionals charged with their care and management. When diversion is coupled with the court-based, problem-solving approach of monitored care and treatment in the community, public safety is improved and the clinical success of the individual is enhanced. When treatment in the community includes an explicit focus on criminogenic factors, the ability to meet public safety goals are enhanced even further. Given these several goals, as well as the considerable variability from jurisdiction to jurisdiction in court resources, treatment resources, social supports, political philosophies, and fiscal realities, the types of diversion that will work for one community may not work for another. However, the overwhelming majority of the data is clear that diversion can be implemented with documented success in the domains described above, and that there are a number of beneficial models for client intercept and associated programming. This chapter reviews the major models used to divert those with serious mental illness from incarceration, paying attention to some of the legal and clinical issues that arise as a result of diversion initiatives. Brief overviews of those interventions, including drug and mental health courts, jail diversion programs, and alternatives to incarceration for the mentally ill, are presented.


2009 ◽  
Vol 27 (5) ◽  
pp. 661-674 ◽  
Author(s):  
Brian Case ◽  
Henry J. Steadman ◽  
Seth A. Dupuis ◽  
Laura S. Morris

CNS Spectrums ◽  
2020 ◽  
Vol 25 (5) ◽  
pp. 651-658
Author(s):  
Charles L. Scott

The United States has the highest incarceration rate in the world. With a substantial number of inmates diagnosed with mental illness, substance use, or both, various diversion strategies have been developed to help decrease and avoid criminalization of individuals with mental illness. This article focuses primarily on the first three Sequential Intercept Model intercept points as related to jail diversion and reviews types of diversion programs, research outcomes for diversion programs, and important components that contribute to successful diversion.


2021 ◽  
Vol 11 (8) ◽  
pp. 3487
Author(s):  
Helge Nordal ◽  
Idriss El-Thalji

The introduction of Industry 4.0 is expected to revolutionize current maintenance practices by reaching new levels of predictive (detection, diagnosis, and prognosis processes) and prescriptive maintenance analytics. In general, the new maintenance paradigms (predictive and prescriptive) are often difficult to justify because of their multiple inherent trade-offs and hidden systems causalities. The prediction models, in the literature, can be considered as a “black box” that is missing the links between input data, analysis, and final predictions, which makes the industrial adaptability to such models almost impossible. It is also missing enable modeling deterioration based on loading, or considering technical specifications related to detection, diagnosis, and prognosis, which are all decisive for intelligent maintenance purposes. The purpose and scientific contribution of this paper is to present a novel simulation model that enables estimating the lifetime benefits of an industrial asset when an intelligent maintenance management system is utilized as mixed maintenance strategies and the predictive maintenance (PdM) is leveraged into opportunistic intervals. The multi-method simulation modeling approach combining agent-based modeling with system dynamics is applied with a purposefully selected case study to conceptualize and validate the simulation model. Three maintenance strategies (preventive, corrective, and intelligent) and five different scenarios (case study data, manipulated case study data, offshore and onshore reliability data handbook (OREDA) database, physics-based data, and hybrid) are modeled and simulated for a time period of 20 years (175,200 h). Intelligent maintenance is defined as PdM leveraged in opportunistic maintenance intervals. The results clearly demonstrate the possible lifetime benefits of implementing an intelligent maintenance system into the case study as it enhanced the operational availability by 0.268% and reduced corrective maintenance workload by 459 h or 11%. The multi-method simulation model leverages and shows the effect of the physics-based data (deterioration curves), loading profiles, and detection and prediction levels. It is concluded that implementing intelligent maintenance without an effective predictive horizon of the associated PdM and effective frequency of opportunistic maintenance intervals, does not guarantee the gain of its lifetime benefits. Moreover, the case study maintenance data shall be collected in a complete (no missing data) and more accurate manner (use hours instead of date only) and used to continuously upgrade the failure rates and maintenance times.


2014 ◽  
Vol 85 ◽  
pp. 433-441 ◽  
Author(s):  
Girish Upreti ◽  
Prasanna V. Rao ◽  
Rapinder S. Sawhney ◽  
Isaac Atuahene ◽  
Rajive Dhingra

2016 ◽  
Vol 67 (1) ◽  
pp. 133-136 ◽  
Author(s):  
Kristin Stainbrook ◽  
Stephanie Hartwell ◽  
Amy James

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