Automated Targeting for Property Integration

Resource conservation is an effective way for reducing operation cost and to maintain business sustainability. Most previous works have been restricted to "chemo-centric" or concentration-based systems where the characterisation of the streams and constraints on the process sinks are descr...

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Bibliographic Details
Main Authors: Tan, Yin, Pau, C., Ng, D., Foo, D., Tan, R.
Other Authors: American Institute of Chemical Engeneers
Format: Conference Paper
Published: Omnipress 2008
Subjects:
Online Access:http://hdl.handle.net/20.500.11937/45272
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author Tan, Yin
Pau, C.
Ng, D.
Foo, D.
Tan, R.
author2 American Institute of Chemical Engeneers
author_facet American Institute of Chemical Engeneers
Tan, Yin
Pau, C.
Ng, D.
Foo, D.
Tan, R.
author_sort Tan, Yin
building Curtin Institutional Repository
collection Online Access
description Resource conservation is an effective way for reducing operation cost and to maintain business sustainability. Most previous works have been restricted to "chemo-centric" or concentration-based systems where the characterisation of the streams and constraints on the process sinks are described in terms of the concentration of pollutants. However, there are many applications in which stream quality is characterised by physical or chemical properties rather than pollutant concentration. In this work, the automated targeting approach originally developed for the synthesis of composition-based resource conservation network is extended for property-based network. Based on the concept of insight-based targeting approach, the automated targeting technique is formulated as a linear programming (LP) model for which the global optimum is guaranteed. Two literature examples are solved to illustrate the proposed approach.
first_indexed 2025-11-14T09:24:53Z
format Conference Paper
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institution Curtin University Malaysia
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last_indexed 2025-11-14T09:24:53Z
publishDate 2008
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spelling curtin-20.500.11937-452722017-01-30T15:19:46Z Automated Targeting for Property Integration Tan, Yin Pau, C. Ng, D. Foo, D. Tan, R. American Institute of Chemical Engeneers Resource conservation Property integration Waste - reduction Property interception Process integration Optimisation Resource conservation is an effective way for reducing operation cost and to maintain business sustainability. Most previous works have been restricted to "chemo-centric" or concentration-based systems where the characterisation of the streams and constraints on the process sinks are described in terms of the concentration of pollutants. However, there are many applications in which stream quality is characterised by physical or chemical properties rather than pollutant concentration. In this work, the automated targeting approach originally developed for the synthesis of composition-based resource conservation network is extended for property-based network. Based on the concept of insight-based targeting approach, the automated targeting technique is formulated as a linear programming (LP) model for which the global optimum is guaranteed. Two literature examples are solved to illustrate the proposed approach. 2008 Conference Paper http://hdl.handle.net/20.500.11937/45272 Omnipress fulltext
spellingShingle Resource conservation
Property integration
Waste - reduction
Property interception
Process integration
Optimisation
Tan, Yin
Pau, C.
Ng, D.
Foo, D.
Tan, R.
Automated Targeting for Property Integration
title Automated Targeting for Property Integration
title_full Automated Targeting for Property Integration
title_fullStr Automated Targeting for Property Integration
title_full_unstemmed Automated Targeting for Property Integration
title_short Automated Targeting for Property Integration
title_sort automated targeting for property integration
topic Resource conservation
Property integration
Waste - reduction
Property interception
Process integration
Optimisation
url http://hdl.handle.net/20.500.11937/45272