Robert Turney, Ph.D.

Adjunct Professor

  • Milwaukee WI UNITED STATES
  • Electrical Engineering and Computer Science Department

Dr. Robert Turney is an expert in the areas of digital image and video processing, real-time embedded systems and products.

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Education, Licensure and Certification

M.S.

Electrical Engineering

University of Wisconsin-Milwaukee

1992

Ph.D.

Electrical Engineering

University of Wisconsin-Milwaukee

2005

B.S.

Electrical Engineering

University of Wisconsin-Milwaukee

1989

Biography

Dr. Robert Turney is an adjunct professor in the Electrical Engineering and Computer Science Department at MSOE. He is an engineering fellow and team lead for the Advanced Development Group at Johnson Controls, where he previously was a lead staff engineer.

Areas of Expertise

Hardware Architecture
Electrical Engineering
Algorithms
Digital Signal Processing
Engineering Education

Accomplishments

Johnson Controls Merit Award

2018

Model Based Design for VRF Systems

Inventor of the year

2017

Johnson Controls

Johnson Controls Chairman’s Award

2016

Stanford Energy Facility, EOS optimization system

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Affiliations

  • Institute of Electrical and Electronics Engineers (IEEE) : Senior Member
  • UWM Industrial Liaison Board : Member

Social

Patents

Systems and methods for rapid disturbance detection and response

US9568204B2

2017

A method for detecting and responding to disturbances in a HVAC system using a noisy measurement signal and a signal filter is provided. The method includes detecting a deviation in the noisy measurement signal, resetting the filter in response to a detected deviation exceeding a noise threshold, filtering the noisy measurement signal using the signal filter to determine an estimated state value, and determining that a disturbance has occurred in response to the estimated state value crossing a disturbance threshold.

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Systems and methods for cascaded model predictive control

US9852481B1

2017

Methods and systems to minimize energy cost in response to time-varying energy prices are presented for a variety of different pricing scenarios. A cascaded model predictive control system is disclosed comprising an inner controller and an outer controller. The inner controller controls power use using a derivative of a temperature setpoint and the outer controller controls temperature via a power setpoint or power deferral.

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Systems and methods for energy cost optimization in a building system

US9436179B1

2016

Methods and systems to minimize energy cost in response to time-varying energy prices are presented for a variety of different pricing scenarios. A cascaded model predictive control system is disclosed comprising an inner controller and an outer controller. The inner controller controls power use using a derivative of a temperature setpoint and the outer controller controls temperature via a power setpoint or power deferral.

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Selected Publications

A mixed-integer linear programming model for real-time cost optimization of building heating, ventilation, and air conditioning equipment

Energy and Buildings

2017

In this paper, we present a framework for the formulation and solution of mixed-integer linear programming (MILP) models for operational planning of HVAC systems in commercial buildings. We introduce the general concepts of generators (e.g., chillers, boilers, cooling towers) and resources (e.g., electricity, chilled water), which allow us to model a wide range of central plants.

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Distributed economic model predictive control for large-scale building temperature regulation

IEEE

2016

Although recent research has suggested model predictive control as a promising solution for minimizing energy costs of commercial buildings, advanced control systems have not been widely deployed in practice. Large-scale implementations, including industrial complexes and university campuses, may contain thousands of air handler regions each with tens of zones.

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Closed-Loop Scheduling for Cost Minimization in HVAC Central Plants

International High Performance Buildings Conference

2016

In this paper, we examine closed-loop operation of an HVAC central plant to demonstrate that closed-loop receding-horizon scheduling provides robustness to inaccurate forecasts, and that economic performance is not seriously impaired by shortened prediction horizons or inaccurate forecasts when feedback is employed.

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