Search

US-12625475-B2 - Control system for carbon intensity management in a hydrogen supply network

US12625475B2US 12625475 B2US12625475 B2US 12625475B2US-12625475-B2

Abstract

A computer-implemented method of providing hydrogen having a defined carbon intensity (CI) value to an end user location, the process comprising: selecting a total end-to-end maximum CI value for the hydrogen from production to delivery of the hydrogen to an end user location; receiving one or more feedstocks; receiving product CI values associated with each feedstock and/or the produced hydrogen; receiving demand data defining the end user demand for the hydrogen; receiving renewable power data; defining, in an optimization model, a plurality of constraints; generating, using the optimization model, a control strategy for control of the one or more industrial plants; and controlling the industrial plants in accordance with the values of the control variables to process the one or more feedstocks in order to provide a required quantity of hydrogen meeting the selected total end-to-end maximum CI value for use by an end user.

Inventors

  • Pratik Misra
  • Sanjay Mehta

Assignees

  • AIR PRODUCTS AND CHEMICALS, INC.

Dates

Publication Date
20260512
Application Date
20230818

Claims (18)

  1. 1 . A computer-implemented method of providing hydrogen having a defined carbon intensity (CI) value to an end user location, the process being executed by at least one hardware processor and comprising: selecting, using a computer system, a total end-to-end maximum CI value for the hydrogen from production to delivery of the hydrogen to an end user location in order to meet predetermined CI requirements for the hydrogen; receiving, by an industrial processing facility having one or more industrial plants powered at least in part by renewable power sources, one or more feedstocks, the one or more feedstocks being processed by the one or more industrial plants to provide hydrogen; receiving, using a computer system, one or more product CI values associated with each feedstock and/or the produced hydrogen; receiving, using a computer system, demand data defining the end user demand for the hydrogen, the end user demand for the hydrogen being defined as a quantity of hydrogen required as a function of time; receiving, using a computer system, renewable power data related to the available renewable power from the renewable power sources as a function of time; defining, in an optimization model, a plurality of constraints, the constraints being selected from the group of: the maximum CI value; the one or more product CI values; the demand data; and the renewable power data; generating, using the optimization model, a control strategy for control of the one or more industrial plants operable to satisfy the one or more constraints, the control strategy comprising values of one or more control variables for control of operational parameters of the one or more industrial plants; and controlling the industrial plants in accordance with the values of the control variables to process the one or more feedstocks in order to provide a required quantity of hydrogen meeting the selected total end-to-end maximum CI value for use by an end user; wherein a feedstock comprises ammonia and an industrial plant comprises an ammonia cracker plant to produce hydrogen.
  2. 2 . A computer-implemented method according to claim 1 , wherein the one or more product CI values comprises, for each feedstock, a first CI value for production of the feedstock in a production facility and a second CI value for transportation of the feedstock from the production facility to the industrial processing facility.
  3. 3 . A computer-implemented method according to claim 2 , wherein the one or more product CI values comprises a third CI value defining the CI value for onward transportation of a predetermined quantity of hydrogen from the industrial processing facility to the end user location.
  4. 4 . A computer-implemented method according to claim 1 , wherein one or more control variables comprise the hydrogen production rate of the ammonia cracker plant.
  5. 5 . A computer-implemented method according to claim 1 , wherein one or more control variables comprise the selection of the type of cracker fuel for operating the ammonia cracker plant from one or more of: natural gas; biogenic natural gas; and ammonia.
  6. 6 . A computer-implemented method according to claim 1 , wherein an industrial plant comprises a hydrogen liquefier plant.
  7. 7 . A computer-implemented method according to claim 6 , wherein one or more control variables comprises the production rate of the hydrogen liquefier plant.
  8. 8 . A computer-implemented method according to claim 1 , wherein an industrial plant comprises a hydrogen compressor arrangement.
  9. 9 . A computer-implemented method according to claim 8 , wherein one or more control variables comprise the operation rate of the hydrogen compressor arrangement.
  10. 10 . A computer-implemented method according to claim 1 , wherein one or more control variables relate to selection of the power source for powering the industrial processing facility as a function of time.
  11. 11 . A computer-implemented method according to claim 10 , wherein the power source is selected from one or more renewable power sources and/or grid power.
  12. 12 . An industrial processing facility operable to provide hydrogen having a defined carbon intensity (CI) value to an end user location, the industrial processing facility comprising one or more industrial plants powered at least in part by renewable power sources, and a computer system comprising at least one hardware processer, the industrial processing facility being configured to: select, using a computer system, a total end-to-end maximum CI value for the hydrogen from production to delivery of the hydrogen to an end user location in order to meet predetermined CI requirements for the hydrogen; receive, by an industrial processing facility, one or more feedstocks, the one or more feedstocks being processed by the one or more industrial plants to provide hydrogen; receive, using a computer system, one or more CI values associated with each feedstock and/or the produced hydrogen; receive, using a computer system, demand data defining the end user demand for the hydrogen, the end user demand for the hydrogen being defined as a quantity of hydrogen required as a function of time; receive, using a computer system, renewable power data related to the available renewable power from the renewable power sources as a function of time; define, in an optimization model, a plurality of constraints, the constraints being selected from the group of: the maximum CI value; the one or more CI values; the demand data; and the renewable power data; generate, using the optimization model, a control strategy for control of the one or more industrial plants operable to satisfy the one or more constraints, the control strategy comprising values of one or more control variables for control of operational parameters of the one or more industrial plants; and control the industrial plants in accordance with the values of the control variables to process the one or more feedstocks in order to provide a required quantity of hydrogen meeting the selected total end-to-end maximum CI value for use by an end user; wherein an industrial plant comprises an ammonia cracker plant to produce hydrogen and wherein a feedstock comprises ammonia.
  13. 13 . An industrial processing facility according to claim 12 , wherein one or more control variables comprise the hydrogen production rate of the ammonia cracker plant.
  14. 14 . An industrial processing facility according to claim 12 , wherein one or more control variables comprise the selection of the type of cracker fuel for operating the ammonia cracker plant from one or more of: natural gas; biogenic natural gas; and ammonia.
  15. 15 . An industrial processing facility according to claim 12 , wherein an industrial plant comprises a hydrogen liquefier plant.
  16. 16 . An industrial processing facility according to claim 15 , wherein one or more control variables comprises the production rate of the hydrogen liquefier plant.
  17. 17 . An industrial processing facility according to claim 12 , wherein an industrial plant comprises a hydrogen compressor arrangement.
  18. 18 . A non-transitory computer readable storage medium storing a program of instructions executable by a machine to perform a method of providing hydrogen having a defined carbon intensity (CI) value to an end user location, the process being executed by at least one hardware processor and comprising: selecting, using a computer system, a total end-to-end maximum CI value for the hydrogen from production to delivery of the hydrogen to an end user location in order to meet predetermined CI requirements for the hydrogen; receiving, by an industrial processing facility having one or more industrial plants powered at least in part by renewable power sources, one or more feedstocks, the one or more feedstocks being processed by the one or more industrial plants to provide hydrogen; receiving, using a computer system, one or more CI values associated with each feedstock and/or the produced hydrogen; receiving, using a computer system, demand data defining the end user demand for the hydrogen, the end user demand for the hydrogen being defined as a quantity of hydrogen required as a function of time; receiving, using a computer system, renewable power data related to the available renewable power from the renewable power sources as a function of time; defining, in an optimization model, a plurality of constraints, the constraints being selected from the group of: the maximum CI value; the one or more CI values; the demand data; and the renewable power data; generating, using the optimization model, a control strategy for control of the one or more industrial plants operable to satisfy the one or more constraints, the control strategy comprising values of one or more control variables for control of operational parameters of the one or more industrial plants; and controlling the industrial plants in accordance with the values of the control variables to process the one or more feedstocks in order to provide a required quantity of hydrogen meeting the selected total end-to-end maximum CI value for use by an end user; wherein a feedstock comprises ammonia and an industrial plant comprises an ammonia cracker plant to produce hydrogen.

Description

FIELD OF THE INVENTION The present invention relates to a method and system for control of one or more industrial processes in a hydrogen supply network. More particularly, the present invention relates to the control of one or more industrial processes in a hydrogen supply network in order to meet carbon intensity (CI) constraints. BACKGROUND OF THE INVENTION Industrial gas supply networks comprise one or more processes defining the production, transformation, transporting and distribution of gases for end-user applications. In general, the inputs to industrial gas supply networks are feedstock elements (which may include raw materials and/or gaseous or liquid chemicals for production of gas or gas precursors) and energy sources to power those production and refining processes. The ultimate outputs of industrial gas supply networks are gaseous and/or liquified products delivered to end users. In certain applications, industrial gases may be used as fuel gases or liquified fuel gases for end users. Fuel supply networks are of significant importance because they supply fuels vital for the functioning of economies around the world. However, fuel supply networks are increasingly scrutinized because the production, processing, distribution, and end uses of fuels are often associated with the environmental pollutants. The technical field of the supply and use of fuels has undergone significant changes in recent years. Many of these changes have been driven by the urgent need to reduce greenhouse gas emissions and mitigate the impacts of climate change. As a result, there has been a growing interest in the development of low carbon and renewable fuels that can help to reduce the carbon intensity (CI) of transportation and other energy-intensive sectors. Governments around the world have been implementing strict limits on the CI of fuels used in various applications. These limits have spurred innovation in the production, transportation, and processing of low carbon fuels, as well as the development of new technologies and systems for managing their CI throughout a fuel supply network. One area of particular interest in this field is the production of fuels using renewable energy sources, such as solar, wind, and hydroelectric power. By harnessing these clean energy sources, it is possible to produce fuels with very low to zero CI at the point of production. Examples of such fuels include green ammonia, green hydrogen, and other low carbon fuels that can be used in a variety of applications, from powering vehicles to providing energy for industrial processes. However, the production of low carbon fuels is only one part of the equation. In order to ensure that these fuels maintain their low CI throughout the supply chain, it is necessary to carefully manage their transportation, intermediate processing, and final delivery to end users. This involves making a series of complex decisions including, but not limited to, factors such as ship routing, fuel selection and transportation speed and selection of land-based transportation routes and methods for delivery of the fuel to end users. In addition to transportation, the intermediate processing stages of low carbon fuels can also have a significant impact on the overall CI of a fuel. For example, considering hydrogen as a low carbon fuel, these stages may include operations such as cracking ammonia to produce green hydrogen, compressing hydrogen for pipeline delivery, and liquefying hydrogen for long-distance transportation by ship, truck or train. Each of these processes requires energy input, which can contribute to the CI of the final fuel product. Therefore, it is essential to develop efficient and effective control methods for managing the energy consumption and CI of these intermediate processing operations. For a fuel such as hydrogen to qualify as a low carbon or renewable fuel there is a strict limit on its CI value at the end user location. This is typically imposed by governments. An example of such a limit is the RED II requirement which specifies 28.2 gCO2e/MJ for renewable liquid and gaseous fuels of non-biological origin (RFNBO) in Europe. Despite the progress that has been made in this field, there are still many shortcomings and limitations associated with existing implementations of CI-based fuel processes. For example, current systems may not be able to effectively manage the complex trade-offs between cost, CI, product demand and availability, or they may lack the flexibility to adapt to changing market conditions and regulatory requirements. Therefore, there exists a need in the art to provide more effective methods and systems to address these issues. SUMMARY The following introduces a selection of concepts in a simplified form in order to provide a foundational understanding of some aspects of the present disclosure. The following is not an extensive overview of the disclosure and is not intended to identify key or critical elements of the discl