Literature Review of Energy Management in Combined Heat and Power Systems Based on High-Temperature Proton Exchange Membrane Fuel Cells for Residential Comfort Applications
Abstract
:1. Introduction
2. Fuel Cell Technologies
3. Proton Exchange Membrane Fuel Cells
- Anode: corresponding to the left part of Figure 2. Fuel in the shape of gas goes through these pores to reach the interface with the electrolyte, responsible for conducting ions and the place where fuel oxidises; electrons move across an external circuit from anode to cathode.
- Cathode: corresponding to the right part of Figure 2. The oxidant goes through cathode’s pores to the electrolyte interface, where reduction takes place.
- Membrane: constituting an electrolyte, at the centre of Figure 2, it is responsible for conducting ions between electrodes.
- Bipolar plates: place where the anode and cathode channels are located, responsible for conveying electrons and reactants to the electrodes, as well as evacuating their excess and the reaction products. Heat released by the system needs to be handled adequately with additional devices.
- Half reactions shown above have an entropy variation related to heat.
- The electrochemical reaction itself releases heat during its activation.
- Gas diffusion layers in the fuel cell, responsible for conveying gases from the anode to the catalyst layer, undergo processes of sorption and desorption, contributing or diminishing heat released, depending on the case.
- Heat is released in the electrical part of the system by the Joule effect.
- Water phase-change in the gas diffusion layer, in the case of low-temperature fuel cells, absorbs heat from the cell.
- Redox reactions need an activation energy to start, especially important in low-current scenarios.
- Ion transport across the membrane and electrodes involve ohmic resistance, neglected in the case of bipolar plates.
- There is a drop in voltage due to matter transport through porous electrodes, specifically the gas diffusion layer. This phenomenon is especially harsh at high currents and is related to current density j, which is a function of current I and the electrode area A:
- is the Nernst reversible potential;
- and is the voltage drop provoked by activation at the anodic and cathodic electrodes, respectively;
- is the voltage caused by ohmic resistance;
- and are the voltage drop due to matter transport at the anodic and cathodic electrode, respectively, also known as concentration losses.
- Generation of liquid water in LT-PEMFCs causes problems when managing this water and its distribution along the system. In LT-PEMFCs, membrane humidity should be kept within limits for proper operation. This humidity should not be too low, as a dry membrane does not work properly, but neither should it be too high, as this can lead to membrane flooding. This is not a problem in the case of HT-PEMFCs, as temperatures above water’s boiling point turns the water into vapour, and membrane operation is not as restrictive as in LT-PEMFCs [15,16].
- The electrochemical reaction at the cathode side is slowed in LT-PEMFCs. This may cause cathode overpotential, responsible for cell voltage losses [13].
- A high concentrations of carbon monoxide (CO, above 10 ppm) reduces performance, as it causes platinum poisoning (platinum being used as an electro-catalyst). Although platinum poisoning cannot be completely eliminated, this risk is substantially reduced in the case of HT-PEMFC, as higher temperatures (above 140 °C) allow higher CO tolerance. This is because higher temperatures catalyse the chemical reaction between CO and water vapour to form CO2 and hydrogen [3].
3.1. Proton Exchange Membrane Fuel Cell Models
3.2. Proton Exchange Membrane Fuel Cell Control Strategies
- Operating temperature: to prevent excess damage to the cell materials and to meet the required output heat.
- Fuel cell stack voltage or fuel cell stack current: to match the electrical demand required from the fuel cell. If voltage is fixed, current is consequently fixed, as the polarisation curve establishes a direct relation between them. Similarly, if current is chosen as the control variable, voltage follows its behaviour. Choosing current instead of voltage has the advantage of establishing a direct link with hydrogen flow, as they are directly related, while voltage control is done from an electrical point of view through voltage converters.
- Input gases: the amount of each gas injected, as well as their pressure and humidity, influence the stoichiometry and initial reaction conditions. These flows can be controlled to match a particular reactant balance.
3.3. Proton Exchange Membrane Fuel Cell Degradation
- Chemical and mechanical membrane degradation: damage to the membrane affecting the subsequent proton exchange [52].
- Starvation: when the stoichiometry of the reactants (hydrogen and oxygen) is insufficient for the reaction to take place.
- Thermal degradation: material degradation caused by excessive exposure to heat [13].
- Catalyst carbon corrosion: carbon structure of the catalyst is damaged [53].
- Catalytic layer separation: loss of contact between the layers, impeding a proper chemical reaction [54].
- Platinum agglomeration and dissolution: loss of active area of platinum in the catalyst, thus reducing its effect [53].
- Catalyst poisoning: loss of effectiveness of the catalyst due to excessive contact with carbon monoxide (CO) [13].
- Hydrophobic losses in the gas diffusion layer (GDL): transport problems of gases through the porous environment [53].
- Semi-empirical degradation model: based on theoretical regression models to be fitted with parameters experimentally. Experimental data are used to find simple correlations, which is much more direct than the ones codified by physical degradation models. These correlations can be used to directly act against degradation by modifying easily accessible variables, which is not easy for internal variables involved in degradation mechanisms [82,83].
4. Micro CHP Applications
- Fuel cell stack: an array of fuel cells dimensioned depending on the power required, with characteristics described above.
- Heat exchanger: HT-PEMFC heat needs to be processed with a cooling system in many applications, but is used in the case of CHP systems. For this reason, a heat exchanger is required to convey and adapt the temperature of an external fluid that acts as a medium to transfer this heat to use it for thermal demands, although some applications use equivalent systems based on air exchange [86].
- Power conditioning system: converts DC current generated by the fuel cell stack into the adequate shape, be it DC or AC (specifying its voltage levels). Different converters need to be designed for different parts of the system.
- Battery systems: used to save electrical energy during periods of low use for future demand. Storage of this extra energy mitigates problems caused by sudden demand in future periods, preventing overwork in the fuel cell that could contribute to fast degradation.
- Water storage tanks: has an equivalent role to the one corresponding to battery systems, but with the goal of storing hot water to be used later for thermal demands. Due to the fact that fuel cells generate both electrical and thermal energy simultaneously, it is quite typical that high electrical demands produce extra heat that can be stored. The opposite case is also possible, when high thermal demand is needed despite low electrical demand.
- Fuel cell stack with insulation;
- Heat exchanger;
- Desulphuriser;
- Controls and inverter.
5. Energy Management Control Algorithms for Housing Facilities
- Local controllers: control devices such as the fuel cell stack, thermal storage and electrical battery systems. Ensures stability and proper operation of each device.
- Supervisory control: computes and provides system variable values so that electrical and thermal demand at all times are fulfilled. Among all devices involved in the CHP system, some need to be prioritised depending on certain defined objectives. These can be related to efficiency, environmental reasons, mitigating degradation, etc. Figure 6 shows systems controlled and variables provided by the supervisory control: fuel cell, water storage elements and battery systems, as previously presented in Figure 5. Additionally, external elements such as electrical grid connections, thermal energy generated via electrical devices and thermal energy released as waste are depicted. The variables that govern these elements are those that activate or disable them.
- CHP housing systems and their mathematical models;
- Algorithms for CHP energy management.
- Fuel cell current: this must be the main electrical source, instead of grid or other traditional sources, to satisfy demand. However, its variation should also be smooth to prevent degradation, as start–stop reduces fuel cell lifespan. As a consequence, two objectives arise: maximise fuel cell current while reducing current variation.
- Battery state of charge (SOC): batteries must be used to store excess electrical energy during periods of low demand. However, the battery’s state of charge must be kept between limits to avoid degradation.
- Water tank temperature: thermal energy must be used to heat the water tank, so that hot water can be used later to match thermal demand. This value should be below water’s boiling temperature and should be quite stable to be ready when needed.
- Security connections: connection to the grid must be used only when needed, avoiding fast switching between fuel cell, battery and grid. Only in extreme cases and for concretely isolated iterations should this connection be enabled. The same should happen for security connection enablement, such as generating thermal energy via an electric space heater or releasing extra heat produced by the fuel cell to the environment. Both cases should be limited to exceptional occasions.
- Rule-based models;
- Recursive methods;
- Model predictive control (MPC).
5.1. Rule-Based Models
5.2. Recursive Methods
5.3. Model Predictive Control
- Objective function: formed by a set of subfunctions to be minimised, such as fuel cell current and its variation, battery and water tank fluctuations, and energy exchanged with the grid or the environment. These subfunctions need to be multiplied by weight functions so that they can be added and form the global objective function to be minimised. These weight functions need to be selected so that some objectives are prioritised above others.
- Variables: system variables include fuel cell current and variables governing activation and deactivation of the battery, water accumulator, grid connection and environment connection. Electrical and thermal demands are included as system disturbances. Disturbance variables must be predicted so that the MPC can compute future scenarios, even though they cannot be predicted exactly (Figure 9).
- Constraints: these include upper and lower bounds for electrical current, battery state of charge, water accumulator temperature and others. Additionally, the system equations need to be imposed as a constraint.
- Prediction horizon: optimisation is based on the system model and variables evaluated at the current time-step iteration, but it also anticipates future evolution of these variables. For this reason, a certain number of iterations in advance are predicted so that disturbances and other variables are simulated, preparing the system trajectory for what is to come (Figure 9). The control horizon () and prediction horizon () move every time the iteration k advances, predicting an extra step while computing real values for the ones already completed. This ensures reliability and robustness when trying to fulfil electrical and thermal demands.
Multiobjective Problem Analysis Using Pareto Fronts
- A set of clusters of points is defined successively based on the solutions of the optimisation problem;
- For each specific configuration, values are assigned to each cluster;
- The average of every cluster is obtained, and a curve representative of the cluster is defined;
- For each configuration, the centroid profile is calculated;
- This profile’s values are sorted, creating sorted means and classifying them by the order in which they appear in the original curve;
- Values are sorted according to the order established by the cluster’s representative curve.
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Abbreviations
HT | High-temperature |
LT | Low-temperature |
PEM | Proton exchange membrane |
FC | Fuel cell |
PEMFC | Proton exchange membrane fuel cell |
HT-PEMFC | High-temperature proton exchange membrane fuel cell |
LT-PEMFC | Low-temperature proton exchange membrane fuel cell |
DMFC | Direct methanol fuel cell |
AFC | Alkaline fuel cell |
PAFC | Phosphoric acid fuel cell |
MCFC | Molten carbonate fuel cell |
SOFC | Solid oxide fuel cell |
CHP | Combined heat and power |
ECSA | Electrochemical active surface area |
SOC | State of charge of a battery or other storage element |
MPC | Model predictive control |
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Type | Electrolyte | Temp. (°C) | Fuel | Advantages | Problems |
---|---|---|---|---|---|
Polymeric (PEMFC) | Polymeric membrane | 30–100 (LT) 120–200 (HT) | H2 | - Fast start-up - Solid electrolyte | - Pure H2 needed - Expensive catalyst |
Direct Methanol (DMFC) | Polymeric membrane | 30–100 | CH3OH | - Liquid fuel - No reforming step for fuel | - Slow reaction - Fuel crossover from anode to cathode |
Alkaline (AFC) | KOH (liquid) | 65–220 | KOH | - Better current response (fast cathodic reaction) | - Reactants must be removed |
Phosphoric Acid (PAFC) | H3PO4 | 150–220 | H2 | - High efficiency with heat cogeneration | - Low power and current - Expensive catalysts |
Molten Carbonate (MCFC) | Carbonates (Li, Na, K) | 600–1000 | H2 | - Better conductivity - High current density | - Slow start-up - Material problems |
Solid Oxide (SOFC) | (Zr, Y) O2 | 600–1000 | H2 | - Solid electrolyte - Low cost material | - Material problems - Corrosion of metal |
Characteristics | Concentrated Parameter Models | PDE Models | Experimental Studies | HT Models | LT Models | 1D Models | 2D and 1D+1D Models | 3D Models | |
---|---|---|---|---|---|---|---|---|---|
PEMFC models | [15], [16], [26], [27], [28], [29], [30], [31] | [6], [24], [32], [33], [34] | [16], [17], [19], [20], [21], [22], [23], [25], [26], [35] | [19], [21], [33], [35] | [6], [16], [17], [21], [22], [23], [33] | [19], [20], [24], [25], [26], [32], [35] | [6], [24], [25], [33], [34], [35] | [22], [23], [26] | [16], [17], [19], [21] |
PEMFC annex systems models | [6], [15], [27], [31], [36] | [6], [34] | [31], [37] | [6], [15], [27], [31], [36], [37] | [6], [34] | ||||
CHP systems | [4], [6], [38], [39], [40] | [6], [11], [40] | [6], [11], [38], [39], [40], [41] | [6], [11], [40] |
State Feedback Control | Nonlinear Plant Control | Linearised Plant Control | Predictive Control | PID Controllers | LPV | Neural Network Control | |
---|---|---|---|---|---|---|---|
PEMFC | [26] | [42], [43], [44], [45] | [46], [47], [48], [49] | [45], [47], [49], [50] | [46], [49] | [42], [43] | [49], [51] |
PEMFC annex systems | [42], [43,44] | [46], [47] | [47] | [46] | [42], [43] | ||
CHP systems | [44] |
Chemical and Mechanical Membrane Degradation | Thermal Degradation | Catalyst Carbon Corrosion | Catalytic Layer Separation | Platinum Agglomeration and Dissolution | Catalyst Poisoning | Hydrophobic Losses in the GDL | |
---|---|---|---|---|---|---|---|
HT-PEMFC | [13], [52], [54], [55], [56], [57], [58] | [13], [52], [53], [56], [57], [58], [59] | [13], [52], [54], [55], [56], [57] | [52], [54] | [13], [52], [53], [54], [57] | [13], [54] | [55] |
LT-PEMFC | [13], [59], [60], [61], [62], [63], [64], [65], [66], [67], [68], [69] | [59], [60], [65], [69] | [13], [61], [66], [67], [68], [69], [70], [71], [72], [73] | [63], [64], [68] | [13], [61], [62], [63], [64], [66], [67], [68], [69], [70], [71], [73] | [13], [62], [63], [69] | [59], [61], [62], [66], [67], [69], [73], [74] |
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Sanz i López, V.; Costa-Castelló, R.; Batlle, C. Literature Review of Energy Management in Combined Heat and Power Systems Based on High-Temperature Proton Exchange Membrane Fuel Cells for Residential Comfort Applications. Energies 2022, 15, 6423. https://doi.org/10.3390/en15176423
Sanz i López V, Costa-Castelló R, Batlle C. Literature Review of Energy Management in Combined Heat and Power Systems Based on High-Temperature Proton Exchange Membrane Fuel Cells for Residential Comfort Applications. Energies. 2022; 15(17):6423. https://doi.org/10.3390/en15176423
Chicago/Turabian StyleSanz i López, Víctor, Ramon Costa-Castelló, and Carles Batlle. 2022. "Literature Review of Energy Management in Combined Heat and Power Systems Based on High-Temperature Proton Exchange Membrane Fuel Cells for Residential Comfort Applications" Energies 15, no. 17: 6423. https://doi.org/10.3390/en15176423