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CTBE Virtual Sugarcane
Biorefinery Proposal: concept,
objectives and execution plan
Centro de Ciência e Tecnologia do Bioetanol – CTBE
Antonio Bonomi
antonio.bonomi@bioetanol.org.br

Workshop on Virtual Sugarcane Biorefinery:
assessing success of new technologies

    August, 2009
Content

(1)   Motivation and Concept
(2)   Objectives
(3)   Scope
(4)   Execution Plan
        • Mathematical Modeling and Simulation Net
        • Integrated Process Simulation
        • Sustainability Parameters
        • Assessment and Validation
(5)   Activities and Schedule

(6)   Expected Benefits
Motivation


    How to measure the success
     level in R&D&I activities ?

  Basic Science       Publications

  Technology Development           ?

    In order to solve this dilemma,
       CTBE decided to build the
Virtual Sugarcane Biorefinery Program
Concept - VSB


  • CTBE’s Programs                   Mathematical
• Associated Institutions             Modeling Net
    • Stakeholders                     • Processes
                                     • Unit Operations




      Process                     Virtual Biorefinery
     Alternatives                       • Simulation                    Assessment of
                                  • Process Optimization
     (industrial and
                                   • Impacts Calculation               Success Level
       agricultural)
                            • Comparison with Standard Biorefinery




                                                            Input -
                                                                          Virtual
       Impacts:          Economic         Life Cycle
       • economic        And Risk        Assessment         Output      Sugarcane
    • environmental     Assessment          (LCA)         Assessment    Biorefinery
          • social                                                         (VSB)
Concept - Biorefinery


                                   • Food and Feed Grains,
       Feedstock(s)
biological raw material various,   • Lignocellulosic Biomass,
             mixed                 • Forest Biomass,
                                   • Municipal Solid Waste.

                                   • Bioprocesses,
Processing Technologies            • Chemical Processes,
            various,               • Thermo-chemical Processes,
           combined
                                   • Thermal Processes,
                                   • Physical Processes.



         Products                  • Fuels,
        Substances                 • Chemical,                       Basic
        and Energy                 • Materials,                   Principles
           various,
    multi product systems          • Specialties,                     of a
                                   • Commodities, Goods.          Biorefinery
                                                                  (Kamm and Kamm,
                                                                       2004)
Objectives



(1) Optimize concepts and processes.

(2) Assess different biorefinery alternatives.

(3) Assess stage of development of new
    technologies.
Scope


Basic routes to be designed / technically assessed:

   Route 1: ethanol (1st generation), sugar, electricity;

   Route 2: ethanol (2nd generation) – hydrolysis;

   Route 3: liquid fuels – synthesis gas;

   Route 4: alcoholchemistry;
                                             In all routes
                                               sugarcane
   Route 5: sugarchemistry;                   agricultural
                                             technologies
   Route 6: lignocellulosechemistry;         are included



   Route n: other routes.
Scope

Development stages:

  Basic Biorefinery: definition of standard production units,
            considering the defined routes, including both
            industrial and agro technologies.

  Optimized Biorefinery: construction of mathematical
            models for the operation units – optimization
            of the production (agriculture and industrial)
            units. Integration with a Net of Institutions.

  Aggregated Biorefinery: aggregation of the concepts of
           raw-material production and product and by-
           product uses.
Execution Plan


  Mathematical Modeling and Simulation Net


     Sub-Net 1                     Sub-Net 2

    Simulation                    Optimization
     Platform                      Strategies
                    NET                                    Virtual
                                                         Optimized
                 Modeling and
                  Simulation
 Sub-Net 3                             Sub-Net 4         Sugarcane
Mathematical
  Models
                                      Sustainability
                                        Impacts
                                                         Biorefinery
                   Agricultural
                  Technologies
Execution Plan

Integrated Process Simulation
                                                            Sub-Net 1

•   Simulation Platform
    -   commercial packages (ASPEN Plus, SuperPro Designer, Hysys)

    -   major characteristics:
          ⇒   large variety of process/operations;
          ⇒   elaborate mass and energy balances;
          ⇒   design and evaluate the cost of equipments;
          ⇒   Data Basis (adequate/update);
          ⇒   calculate required raw materials and utilities;
          ⇒   characterize effluents;
          ⇒   elaborate sustainability analysis.
Execution Plan

Integrated Process Simulation
•   Basic Biorefinery

    -   Gathering Process Data              Production Profile
         ⇒   technical literature;
         ⇒   judicious survey + set of experimental measurements
             at a production unit.


    -   Examples:
         ⇒   MACEDO et al., 2008 – sample of 44 sugarcane mills
                                     Central-South region of Brazil.
         ⇒   IPT, 1990 – Handbook for Energy Conservation in the
                          sugar and ethanol industry.
Execution Plan

Integrated Process Simulation
                                                         Sub-Net 2
•   Optimized Biorefinery

    - development and application of techniques for the
        optimization of subsystems composed by integrated
        operations – examples:
        ⇒   power and heat co-generation;
        ⇒   water net consumption.

    -   integrated processes optimization (example: amount of
        surplus electricity) depends on:
        ⇒   adopted technology for production;
        ⇒   steam consumption;
        ⇒   amount of fibers (bagasse and straw).
Execution Plan

Integrated Process Simulation
•   Optimized Biorefinery                                        Sub-Net 3

    -   mathematical modeling of unit operations:
        ⇒   selection and definition of priorities;
        ⇒   simulation platform / literature (to be adapted);
        ⇒   formulation of a new model.

    -   mathematical modeling formulation:
        ⇒   state variables identification;
        ⇒   models formulation (phenomenological, input-output, etc.);
        ⇒   experimental data (lab, pilot plant or industrial plant);
        ⇒   models fitting;
        ⇒   statistical evaluation;
        ⇒   model validation (by other group).
Execution Plan

Sustainability Parameters                                     Sub-Net 4



•   In order to analyze the most relevant impacts, the
    following tools will be used:
    -   economic and risk analysis
        ⇒   profitability and investment calculations and risk evaluation;

    -   life cycle analysis
        ⇒   environmental aspects related to a product from utilized
            raw material, production, distribution and final use;

    -   input-output analysis
        ⇒   modifications in the level of activity of each sector, as a
            function of the changes in the demand for products of one or
            more sectors.
Execution Plan

Agricultural Technologies                            Sub-Net 5



•   Modeling of agricultural operations.

•   Characteristics of the produced sugarcane and
    interactions with the Biorefinery

•   Environmental aspects related with the agricultural
    sector (irrigation, no-till farming, fertilization, LUC,
    iLUC, transportation, others).
Execution Plan

Assessment and Validation

•   VSB Premises
    -   completely transparent;
    -   plausible;
    -   involvement of the interested parts (stakeholders and
        associated institutions);
    -   stakeholders should help solving conflicts;
    -   practical and feasible standard application models;
    -   adoption of compromise solutions – cannot be modified
        unless a new agreement is reached;
    -   several stages of evaluation and validation.
Execution Plan

Assessment and Validation

•   VSB Program Working Plan
    -   participation of international and national referees;

•   Validation of Mathematical Models

    -   as soon as a MM is constructed by Institution A, it
        should be validated by Institution B.

•   Validation of Obtained Results
    -   should be periodically submitted and evaluated by the
        stakeholders.
Activities and Schedule
Activities and Schedule

          2nd Generation Ethanol


           Basic Flowsheets
           Preliminary Simulation




           Evaluation with P.S.


           Optimized Simulation
           Aggregated Simulation
           Evaluation with O.S.
           Evaluation with A.S.
Expected Benefits


(1) Research Institutions
    • focus research activities;
    • coordinated financial support;
    • identification of research priorities;
    • assessment of research success.
(2) Government Organizations
    • support for government planning;
    • definition of government priorities.
(3) Funding Agencies
    • definition of support priorities;
    • assessment of research success.
(4) Companies – Entrepreneurs
    • support for planning;
    • selection of projects – business opportunities;
    • assessment of research success.
Building Team

CTBE                                           Associated Institutions

VSB Program                                    •   FEQ/UNICAMP
•   Antonio Bonomi (Coordinator)
                                               •   NIPE/UNICAMP
•   Mirna Scandiffio (LCA)
•   Marcelo Cunha (IO, Economic Analysis)      •   DEQ/EPUSP
•   Charles Dayan (Mathematical Modeling)
•   Marina Dias (Simulation Platform)          •   DEQ/UFSCar
•   Specialists (Agriculture, Biorefineries,
                                               •   CTC
          Ethanol Distribution and Use,
          Residues Disposal, others)           •   IPT

Other Programs (strong interaction):           •   UEM
•   Basic Science
                                               •   UFPE
•   Pilot Plant
•   Low Impact Mechanization                       others
•   Sustainability
OBRIGADO !

         Bonomi e Equipe
Execution Plan

Sustainability Parameters
•   Economic Assessment and Risk Analysis
    -   investment calculation;

    -   profitability analysis (net profit, gross margin, return on
                                investment, payback time, etc.);

    -   risk analysis – expected values
                   based on probability
                   distribution of each
                   input variable subject
                   to uncertainty.
Execution Plan

Sustainability Parameters
•   Economic Assessment and Risk Analysis
    -   Results of the Risk Analysis Model
        Ethanol from sugarcane bagasse (US$/liter)
                                                           Accumulated
                                                                                Lower        Higher
         Process                        Expected Value      Occurence
                                                                                Value        Value
                                                           Probability (*)
         Diluted H2SO4                       0.373              52%              0.268       0.520

         Concentrated HCl                    0.507              52%              0.343       0.688

         Organosolv                          1.348              55%              0.867       1.970

         Enzymatic Hydrolysis                0.388              51%              0.275       0.534

         AEX                                 0.691              54%              0.457       1.020

         Pentoses and Glucose                0.453              52%              0.327       0.587
         (*)   Accumulated probability of occurrence from the lower to the expected value.
                                                                                             IPT, 2000
Execution Plan

Sustainability Parameters
•   Life Cycle Analysis - LCA
    -   systematic approach, aiming at identifying the environmental
        aspects related to the life cycle of a product, from its production
        up to its final use;

    -   it includes analysis of:
        ⇒ raw materials
        ⇒ production
        ⇒ distribution
        ⇒ use / disposal
          products and
          by-products.



                                                                     ISO, 2006
Execution Plan

Sustainability Parameters
•   Life Cycle Analysis - LCA
    -   Normalized potential impacts for the ethanol LCA




                                                           OMETTO et al., 2009
Execution Plan

Sustainability Parameters
•   Input-Output Analysis (IO)
    -   input-output models are used to:
        ⇒ quantify the modifications in the level of activity of each sector,
          as a function of the changes in the demand for products of
          one or more sectors;
        ⇒ structural modifications due to technological changes of the
          production sectors.
    -   general equilibrium models are used to capture the alteration in the
        use of production factors and in the production of goods as a
        function of modifications in the relative prices.
    -   used to compare impacts and indicators related to the variables:
        ⇒ level of activity in a sector;   ⇒ collection of taxes;
        ⇒ generated employment;            ⇒ energy use (renewable);
        ⇒ distribution of income;          ⇒ GHG emissions;
        ⇒ added value;                     ⇒ others.
Execution Plan

Sustainability Parameters
•   Input-Output Analysis (IO)
    -   Sector index of incorporated energy in the final demand

                                                    Incorporated    Renewable
                         Sector                       Energy          energy
                                                    (toe/R$1,000)   participation
              Pulp, paper and paper products            0.280          75.9 %

            Coke and refined petroleum products         1.135           5.3 %

                  Ethanol from sugarcane                1.463          96.5 %

                        Chemicals                       0.132          40.5 %

                    Weighted average                    0.119          39.0 %


                                                  CUNHA and PEREIRA, 2008

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CTBE Virtual Sugarcane Biorefinery Proposal: concept, objectives and execution plan

  • 1. CTBE Virtual Sugarcane Biorefinery Proposal: concept, objectives and execution plan Centro de Ciência e Tecnologia do Bioetanol – CTBE Antonio Bonomi antonio.bonomi@bioetanol.org.br Workshop on Virtual Sugarcane Biorefinery: assessing success of new technologies August, 2009
  • 2. Content (1) Motivation and Concept (2) Objectives (3) Scope (4) Execution Plan • Mathematical Modeling and Simulation Net • Integrated Process Simulation • Sustainability Parameters • Assessment and Validation (5) Activities and Schedule (6) Expected Benefits
  • 3. Motivation How to measure the success level in R&D&I activities ? Basic Science Publications Technology Development ? In order to solve this dilemma, CTBE decided to build the Virtual Sugarcane Biorefinery Program
  • 4. Concept - VSB • CTBE’s Programs Mathematical • Associated Institutions Modeling Net • Stakeholders • Processes • Unit Operations Process Virtual Biorefinery Alternatives • Simulation Assessment of • Process Optimization (industrial and • Impacts Calculation Success Level agricultural) • Comparison with Standard Biorefinery Input - Virtual Impacts: Economic Life Cycle • economic And Risk Assessment Output Sugarcane • environmental Assessment (LCA) Assessment Biorefinery • social (VSB)
  • 5. Concept - Biorefinery • Food and Feed Grains, Feedstock(s) biological raw material various, • Lignocellulosic Biomass, mixed • Forest Biomass, • Municipal Solid Waste. • Bioprocesses, Processing Technologies • Chemical Processes, various, • Thermo-chemical Processes, combined • Thermal Processes, • Physical Processes. Products • Fuels, Substances • Chemical, Basic and Energy • Materials, Principles various, multi product systems • Specialties, of a • Commodities, Goods. Biorefinery (Kamm and Kamm, 2004)
  • 6. Objectives (1) Optimize concepts and processes. (2) Assess different biorefinery alternatives. (3) Assess stage of development of new technologies.
  • 7. Scope Basic routes to be designed / technically assessed: Route 1: ethanol (1st generation), sugar, electricity; Route 2: ethanol (2nd generation) – hydrolysis; Route 3: liquid fuels – synthesis gas; Route 4: alcoholchemistry; In all routes sugarcane Route 5: sugarchemistry; agricultural technologies Route 6: lignocellulosechemistry; are included Route n: other routes.
  • 8. Scope Development stages: Basic Biorefinery: definition of standard production units, considering the defined routes, including both industrial and agro technologies. Optimized Biorefinery: construction of mathematical models for the operation units – optimization of the production (agriculture and industrial) units. Integration with a Net of Institutions. Aggregated Biorefinery: aggregation of the concepts of raw-material production and product and by- product uses.
  • 9. Execution Plan Mathematical Modeling and Simulation Net Sub-Net 1 Sub-Net 2 Simulation Optimization Platform Strategies NET Virtual Optimized Modeling and Simulation Sub-Net 3 Sub-Net 4 Sugarcane Mathematical Models Sustainability Impacts Biorefinery Agricultural Technologies
  • 10. Execution Plan Integrated Process Simulation Sub-Net 1 • Simulation Platform - commercial packages (ASPEN Plus, SuperPro Designer, Hysys) - major characteristics: ⇒ large variety of process/operations; ⇒ elaborate mass and energy balances; ⇒ design and evaluate the cost of equipments; ⇒ Data Basis (adequate/update); ⇒ calculate required raw materials and utilities; ⇒ characterize effluents; ⇒ elaborate sustainability analysis.
  • 11. Execution Plan Integrated Process Simulation • Basic Biorefinery - Gathering Process Data Production Profile ⇒ technical literature; ⇒ judicious survey + set of experimental measurements at a production unit. - Examples: ⇒ MACEDO et al., 2008 – sample of 44 sugarcane mills Central-South region of Brazil. ⇒ IPT, 1990 – Handbook for Energy Conservation in the sugar and ethanol industry.
  • 12. Execution Plan Integrated Process Simulation Sub-Net 2 • Optimized Biorefinery - development and application of techniques for the optimization of subsystems composed by integrated operations – examples: ⇒ power and heat co-generation; ⇒ water net consumption. - integrated processes optimization (example: amount of surplus electricity) depends on: ⇒ adopted technology for production; ⇒ steam consumption; ⇒ amount of fibers (bagasse and straw).
  • 13. Execution Plan Integrated Process Simulation • Optimized Biorefinery Sub-Net 3 - mathematical modeling of unit operations: ⇒ selection and definition of priorities; ⇒ simulation platform / literature (to be adapted); ⇒ formulation of a new model. - mathematical modeling formulation: ⇒ state variables identification; ⇒ models formulation (phenomenological, input-output, etc.); ⇒ experimental data (lab, pilot plant or industrial plant); ⇒ models fitting; ⇒ statistical evaluation; ⇒ model validation (by other group).
  • 14. Execution Plan Sustainability Parameters Sub-Net 4 • In order to analyze the most relevant impacts, the following tools will be used: - economic and risk analysis ⇒ profitability and investment calculations and risk evaluation; - life cycle analysis ⇒ environmental aspects related to a product from utilized raw material, production, distribution and final use; - input-output analysis ⇒ modifications in the level of activity of each sector, as a function of the changes in the demand for products of one or more sectors.
  • 15. Execution Plan Agricultural Technologies Sub-Net 5 • Modeling of agricultural operations. • Characteristics of the produced sugarcane and interactions with the Biorefinery • Environmental aspects related with the agricultural sector (irrigation, no-till farming, fertilization, LUC, iLUC, transportation, others).
  • 16. Execution Plan Assessment and Validation • VSB Premises - completely transparent; - plausible; - involvement of the interested parts (stakeholders and associated institutions); - stakeholders should help solving conflicts; - practical and feasible standard application models; - adoption of compromise solutions – cannot be modified unless a new agreement is reached; - several stages of evaluation and validation.
  • 17. Execution Plan Assessment and Validation • VSB Program Working Plan - participation of international and national referees; • Validation of Mathematical Models - as soon as a MM is constructed by Institution A, it should be validated by Institution B. • Validation of Obtained Results - should be periodically submitted and evaluated by the stakeholders.
  • 19. Activities and Schedule 2nd Generation Ethanol Basic Flowsheets Preliminary Simulation Evaluation with P.S. Optimized Simulation Aggregated Simulation Evaluation with O.S. Evaluation with A.S.
  • 20. Expected Benefits (1) Research Institutions • focus research activities; • coordinated financial support; • identification of research priorities; • assessment of research success. (2) Government Organizations • support for government planning; • definition of government priorities. (3) Funding Agencies • definition of support priorities; • assessment of research success. (4) Companies – Entrepreneurs • support for planning; • selection of projects – business opportunities; • assessment of research success.
  • 21. Building Team CTBE Associated Institutions VSB Program • FEQ/UNICAMP • Antonio Bonomi (Coordinator) • NIPE/UNICAMP • Mirna Scandiffio (LCA) • Marcelo Cunha (IO, Economic Analysis) • DEQ/EPUSP • Charles Dayan (Mathematical Modeling) • Marina Dias (Simulation Platform) • DEQ/UFSCar • Specialists (Agriculture, Biorefineries, • CTC Ethanol Distribution and Use, Residues Disposal, others) • IPT Other Programs (strong interaction): • UEM • Basic Science • UFPE • Pilot Plant • Low Impact Mechanization others • Sustainability
  • 22. OBRIGADO ! Bonomi e Equipe
  • 23.
  • 24. Execution Plan Sustainability Parameters • Economic Assessment and Risk Analysis - investment calculation; - profitability analysis (net profit, gross margin, return on investment, payback time, etc.); - risk analysis – expected values based on probability distribution of each input variable subject to uncertainty.
  • 25. Execution Plan Sustainability Parameters • Economic Assessment and Risk Analysis - Results of the Risk Analysis Model Ethanol from sugarcane bagasse (US$/liter) Accumulated Lower Higher Process Expected Value Occurence Value Value Probability (*) Diluted H2SO4 0.373 52% 0.268 0.520 Concentrated HCl 0.507 52% 0.343 0.688 Organosolv 1.348 55% 0.867 1.970 Enzymatic Hydrolysis 0.388 51% 0.275 0.534 AEX 0.691 54% 0.457 1.020 Pentoses and Glucose 0.453 52% 0.327 0.587 (*) Accumulated probability of occurrence from the lower to the expected value. IPT, 2000
  • 26. Execution Plan Sustainability Parameters • Life Cycle Analysis - LCA - systematic approach, aiming at identifying the environmental aspects related to the life cycle of a product, from its production up to its final use; - it includes analysis of: ⇒ raw materials ⇒ production ⇒ distribution ⇒ use / disposal products and by-products. ISO, 2006
  • 27. Execution Plan Sustainability Parameters • Life Cycle Analysis - LCA - Normalized potential impacts for the ethanol LCA OMETTO et al., 2009
  • 28. Execution Plan Sustainability Parameters • Input-Output Analysis (IO) - input-output models are used to: ⇒ quantify the modifications in the level of activity of each sector, as a function of the changes in the demand for products of one or more sectors; ⇒ structural modifications due to technological changes of the production sectors. - general equilibrium models are used to capture the alteration in the use of production factors and in the production of goods as a function of modifications in the relative prices. - used to compare impacts and indicators related to the variables: ⇒ level of activity in a sector; ⇒ collection of taxes; ⇒ generated employment; ⇒ energy use (renewable); ⇒ distribution of income; ⇒ GHG emissions; ⇒ added value; ⇒ others.
  • 29. Execution Plan Sustainability Parameters • Input-Output Analysis (IO) - Sector index of incorporated energy in the final demand Incorporated Renewable Sector Energy energy (toe/R$1,000) participation Pulp, paper and paper products 0.280 75.9 % Coke and refined petroleum products 1.135 5.3 % Ethanol from sugarcane 1.463 96.5 % Chemicals 0.132 40.5 % Weighted average 0.119 39.0 % CUNHA and PEREIRA, 2008