The present invention relates generally to the operation of a fossil fuel-fired (e.g., coal-fired) boiler that is typically used in a power generating unit of a power generation plant, and more particularly to a system for optimizing soot cleaning sequencing and control in a fossil fuel-fired boiler.
The combustion of coal and other fossil fuels in a power generating unit causes buildup of combustion deposits (e.g., soot, ash and slag) in the boiler, including boiler heat transfer surfaces. Combustion deposits generally decrease the efficiency of the boiler, particularly by reducing heat transfer. When combustion deposits accumulate on the boiler tubes, the heat transfer efficiency of the tubes decreases, which in turn decreases boiler efficiency. To maintain a high level of boiler efficiency, the heat transfer surfaces of the boiler are periodically cleaned by directing a cleaning medium (e.g., air, steam, water or mixtures thereof) against the surfaces upon which the combustion deposits have accumulated.
To avoid or eliminate the negative effects of combustion deposits on boiler efficiency, the boiler heat transfer surfaces would need to be essentially free of combustion deposits at all times. Maintaining this level of cleanliness would require virtually continuous cleaning. However, this is not practical under actual operating conditions because cleaning is costly and creates wear and tear on boiler surfaces. Injection of the cleaning medium can reduce boiler efficiency and prematurely damage heat transfer surfaces, particularly if they are over cleaned. Boiler surface and water wall damage resulting from cleaning is particularly costly because correction may require an unscheduled outage of the power generating unit. Therefore, it is important that these surfaces not be cleaned unnecessarily or excessively.
Boiler cleanliness must be balanced against cleaning costs. Accordingly, power generating plants typically maintain reasonable, but less than ideal boiler cleanliness levels. Cleaning operations are regulated to maintain the selected cleanliness levels in the boiler. Different areas of the boiler may accumulate combustion deposits at various rates, and require separate levels of cleanliness and different amounts of cleaning.
The devices used for cleaning the boiler heat transfer surfaces are commonly referred to as soot cleaning devices. Fossil fuel-fired power generating units employ soot cleaning devices including, but not limited to, sootblowers, sonic devices, water lances, and water cannons or hydro jets. These soot cleaning devices use steam, water or air to dislodge combustion deposits and clean surfaces within a boiler. The number of soot cleaning devices on a given power generating unit can range from several to over a hundred. Manual, sequential and time-based sequencing of soot cleaning devices have been the traditional methods employed to improve boiler cleanliness. These soot cleaning devices are generally automated and are initiated by a master control device. In most cases, the soot cleaning devices are activated based on predetermined criteria, established protocols, sequential methods, time-based approaches, operator judgment, or combinations thereof. These methods result in indiscriminate cleaning of the entire boiler or sections thereof, regardless of whether sections are already clean,
In recent years, some power generation plants have replaced manual or time-based systems with criteria-based methods, such as cleaning the boiler in accordance with maintaining certain cleanliness levels. For example, one common approach is to attempt to maintain a predefined cleanliness level by controlling the soot cleaning devices. After a soot cleaning device has cleaned a surface, one or more sensors measure the resulting heat transfer improvement and determine the effectiveness of the immediately preceding soot cleaning operation. The measured cleanliness data is compared against a predefined cleanliness model that is stored in a system processor. One or more soot cleaning operating parameters can be adjusted to alter the aggressiveness of the next soot cleaning operation. The goal is to maintain the required level of heat transfer surface cleanliness for the current boiler operating conditions while minimizing the detrimental effects of the soot cleaning operation.
Criteria-based methods for soot cleaning have some drawbacks. To implement a criteria-based method, it is often necessary to install additional hardware in the boiler, such as heat flux sensors. In addition, cleanliness models are needed to adjust the performance of the soot cleaning control system. Developing these models can be challenging since the models are typically based upon rigorous first principle equations. Finally, criteria-based methods focus on cleaning specific zones in the boiler, rather than improving overall boiler performance.
Boiler operation is generally governed by one or more boiler performance goals. Boiler performance is usually characterized in terms of heat rate, capacity, emissions (e.g., NOx and CO), and other parameters. One principle underlying a soot cleaning operation is to maintain the boiler performance goals. The above-described criteria-based methods do not relate boiler performance to a required level of heat transfer surface cleanliness and, therefore, to optimum operating parameters. The approach assumes that the optimal cleanliness of an area in the boiler is known (e.g., entered by an operator). Accordingly, the approach assumes that required cleanliness levels for desired boiler performance goals are determined separately and provides no mechanism for selecting cleanliness levels for individual heating zones of the boiler. A criteria-based soot cleaning control system does not relate operational settings to boiler performance targets.
The present invention provides a soot cleaning control system that overcomes the drawbacks discussed above, as well as other drawbacks of prior art soot cleaning control systems.
In accordance with the present invention, there is provided a method for optimizing soot cleaning operations in a boiler of a power generating unit. The method includes the steps of: selecting a zone within a boiler for a soot cleaning operation; selecting at least one soot cleaning device within the selected zone; and activating the at least one selected soot cleaning device.
In accordance with another aspect of the present invention, there is provided a soot cleaning optimization system comprising: a soot cleaner zone selection component for selecting a zone within a boiler for a soot cleaning operation; and a soot cleaning device selection component for selecting at least one soot cleaning device within the zone for activation.
An advantage of the present invention is the provision of a soot cleaning control system that includes the use of boiler performance goals in a process for selecting soot cleaning devices for activation.
Another advantage of the present invention is the provision of a soot cleaning control system that includes a zone selection component for selecting a zone in the boiler for a soot cleaning operation and a soot cleaning selection component for selecting specific soot cleaning device(s) within the selected zone for activation.
These and other advantages will become apparent from the following description taken together with the accompanying drawings and the appended claims.
The invention may take physical form in certain parts and arrangement of parts, an embodiment of which will be described in detail in the specification and illustrated in the accompanying drawings which form a part hereof, and wherein:
The present invention is described herein with reference to “sootblowers” and the operation of “sootblowing.” However, it should be understood that the term “sootblower” as used herein refers to soot cleaning devices of all forms. Similarly, the term “sootblowing” as used herein refers to the soot cleaning operations associated with said soot cleaning devices.
Referring now to the drawings wherein the showings are for the purposes of illustrating an embodiment of the present invention only and not for the purposes of limiting same,
Distributed Control System (DCS) 94 is a computer system that provides control of the combustion process by operation of system devices, including, but not limited to, valve actuators for controlling water and steam flows, damper actuators for controlling air flows, and belt-speed control for controlling flow of coal to mills. Sensors (including, but not limited to, oxygen analyzers, thermocouples, resistance thermal detectors, pressure sensors, and differential pressure sensors) sense parameters associated with the boiler and provide input signals to DCS 94. Historians 96 may take the form of a short term or long term historical database or retention system, and may include data that is manually or automatically recorded.
Sootblowers 92 refers to devices used for cleaning boilers (e.g., boiler heat transfer surfaces), including, but not limited to, sootblowers, sonic devices, water lances, and water cannons or hydro-jets. One or more sootblowers 92 are associated with one or more “zones” of a boiler. By way of example, and not limitation, a boiler may be divided into the following zones: furnace, reheat, superheat, economizer, and air preheater.
Sootblower control 90 provides direct control of sootblowers 92 and provides sootblowing optimization system 30 with operational data (e.g. flow, current, duration, mode, state, status, time, etc.) associated with sootblowers 92.
Sootblowing optimization system 30 may be configured and implemented in a general modeling and optimization software product (e.g., ProcessLink® from NeuCo, Inc.) The general modeling and optimization software product may be executed on a conventional computer workstation or server, and includes unidirectional or bi-directional communications interfaces allowing direct communications with sootblower control 90, DCS 94, historians 96 and programmable logic controllers (PLCs).
Using the communications interfaces, sootblowing optimization system 30 collects data indicative of operating conditions of the power generating unit, including, but not limited to, operating conditions associated with sootblowers 92 and the boiler (i.e., boiler parameters). The data indicative of operating conditions is used to update a set of state variables associated with sootblowing control system 10. These state variables store data, such as the time since last activation of each sootblower 92, and the frequency of activation over pre-determined time periods for each sootblower 92.
Referring now to
The propose rules of knowledge base 44 are used to determine one or more proposed actions for addressing various issues relating to boiler performance (e.g., boiler efficiency). At least one trigger condition (i.e., condition(s) associated with a boiler performance issue), at least one enabling condition (i.e., condition(s) for determining whether sootblowing can be currently initiated in a particular zone), and a proposed action (with associated rank) are associated with each propose rule. Inference engine 42 evaluates all of the propose rules of knowledge base 44 to determine a generated list of proposed actions. Inference engine 42 adds a proposed action to the generated list of proposed actions only if all of the following are satisfied: (a) the trigger condition(s) associated with a propose rule and (b) the enabling condition(s) associated with a propose rule.
With reference to the first propose rule (i.e., rule 1) shown in
Inference engine 42 evaluates the apply rule(s) of knowledge base 46 to select a proposed action from the generated list of proposed actions. With reference to rule 1 of the sample apply rules (
For example, if only propose rules 1, 2 and 15 (
It should be understood that a trigger condition associated with a propose rule may also take into consideration whether a dollarized (i.e., monetary) effect of cleaning a zone (e.g., furnace zone) will yield predicted cost savings that exceed a predetermined threshold value. For example, propose rule 15 (
Furthermore, as indicated above, a proposed action may have an associated “monetary rank.” For example, proposed rule 15 (
In the illustrated embodiment, the value of the dollarized (i.e., monetary) effect of cleaning a particular zone is determined by using a model that predicts the effects on NOx emissions and heat rate associated with cleaning the particular zone. The predicted change in NOx emissions and heat rate is multiplied by the current NOx credit value and fuel costs to determine the cost savings associated with the cleaning event. Therefore, a “monetary rank” associated with a proposed action is equal to an expected cost savings, i.e., the dollarized effect of cleaning a particular zone.
An apply rule can also be based upon a dollarized (i.e., monetary) effect of a proposed action. For example, apply rule 1 (
Propose rules 15-17 (
The proposed action of propose rule 15 (i.e., cleaning the furnace zone) is added to the generated list of proposed actions only if both the trigger conditions (i.e., the dollarized effect of cleaning the furnace is greater than a dollar threshold) and the three (3) enabling conditions are met. The rank of the proposed action of rule 15 is equal to the dollarized effect of cleaning the furnace. Likewise, the proposed action of propose rules 16 and 17 are added to the generated list of proposed actions if associated trigger and enabling conditions are met.
If only propose rules 15, and 16 (
An advantage of the propose-apply approach described above is that the apply rules can be used to effectively combine propose rules. For example, if the same action is proposed by multiple propose rules, the rank of a proposed action can be re-evaluated by an apply rule and selected if its rank is higher than the rank of any other proposed action.
Another advantage of the propose-apply approach described above is that the apply rules can be adaptive or based on neural network model(s). For example, sootblowing optimization system 30 can dynamically adjust the ranks associated with proposed actions based on boiler performance. Alternatively, neural network models may be used to determine the effects of cleaning a zone on boiler performance. The resulting boiler performance can then be used to adjust the ranks of the proposed actions. By separating inferencing into two sets of rules (i.e., propose and apply), sootblowing optimization system 30 provides great flexibility for appropriately selecting the zone to clean in a boiler.
Expert system 40 of the present invention provides several advantages:
Following determination by sootblower zone selection component 32 of a selected boiler zone for sootblowing, sootblower selection component 34 is used to determine which sootblower(s) 92 to activate within the selected boiler zone. Sootblower selection component 34 will now be described in detail with reference to
If no time limits have been violated by the sootblowers within the selected zone, scenario generator 52 identifies all sootblowers that can be activated using the enabling conditions described above (step 66). Next, a scenario is generated for activating each identified sootblower (step 68). For example, if three sootblowers in the selected zone are enabled, then three separate scenarios would be generated for activating each of these sootblowers. At the end of the scenario generation, a set of activation scenarios are available for evaluation.
Each scenario generated by scenario generator 52 includes a list of the history of sootblowing activations, such as time since start of last activation of each sootblower. In addition, the scenario may contain data associated with current operating conditions, such as load. In each scenario, a sootblower is selected for activation by scenario generator 52. Therefore, the history of activation associated with that sootblower is modified to reflect activating (i.e., turning on) the sootblower at current time (i.e., time since last activation is modified to be equal to zero).
It should be understood that foregoing references to a single “sootblower” may also refer to a set of sootblowers. Therefore, more than one sootblower may be activated in association with each individual scenario at steps 64 and 68.
Scenario evaluator 54 predicts how activating different sootblowers within a zone will affect boiler performance factors, such as heat rate and NOx. An identical neural network model 55 is used to predict the effects of activations on boiler performance. Model 55 is trained upon historical data over a significant period of time. In addition, model 55 is preferably automatically retuned daily so that any changes in boiler performance can be considered in the latest blower selection.
As shown in
Scenario evaluator 54 computes the cost of each scenario (i.e., COST 1 to COST n) using cost function 57. Low cost selector 59 identifies the scenario with the lowest cost. Thereafter, the one or more sootblowers 92 (i.e., single sootblower or set of sootblowers) associated with the scenario having the lowest cost is activated through the communications interfaces of sootblowing control system 10. After activation of the selected sootblower(s) 92, sootblowing control system 10 waits a predetermined amount of time before re-starting the sootblower selection cycle discussed above. Accordingly, sootblowing control system 10 achieves optimal sootblowing and selects the lowest cost scenario that observes all system constraints.
Referring now to
In still another alternative embodiment of the present invention, sootblowing control system 10 may be combined with other optimization systems, such as a combustion optimization system (e.g., CombustionOpt from NeuCo, Inc.), to improve boiler performance. For example, the combustion optimization system may adjust a boiler's fuel and air biases to lower NOx and improve heat rate. The combustion optimization system computes the resulting fuel and air biases and inputs them to sootblowing optimization system 30, which then takes the effects of these changes into account when determining an optimal sootblowing sequence. Similarly, the sootblowing sequences (i.e., sootblower activation) determined by sootblowing optimization system 30 can be input into the combustion optimization system so that sootblowing effects are taken into account when adjusting fuel and air biases in the boiler.
In summary, sootblowing control system 10 is an intelligent sootblowing system that controls the activation of individual sootblowers based upon expected improvements in boiler performance. Sootblowing optimization system 30 is comprised of two primary components, namely, one that selects which zone in the boiler to clean (i.e., sootblower zone selection component 32) and one that determines the best sootblower or set of sootblowers to activate (i.e., sootblower selection component 34) within the zone. Sootblower zone selection component 32 is based upon use of an expert system 40. Expert system 40 has a propose rules knowledge base 44 and an apply rules knowledge base 46. The propose rules propose actions to address current issues and the apply rules are used to determine which of the proposed actions of a generated list of proposed actions is the optimal action to take to address the current issues.
Within a selected zone, sootblowing optimization system 30 determines scenarios for activating different sootblowers. Using neural network models, sootblowing optimization system 30 evaluates each scenario and determines the expected (i.e., predicted) boiler performance associated with each scenario. Sootblowing optimization system 30 then uses the best expected boiler performance scenario to determine which sootblower or set of sootblowers to activate within the zone. This approach allows the user to formulate both the rules in the sootblowing control system as well as criteria for optimal performance.
It should be appreciated that different variations of sootblowing control system 10 can be deployed based upon requirements. For instance, the sootblowing optimization system may alternatively be used to provide optimal cleanliness factors in connection with a conventional criteria-based sootblowing system, as discussed above in connection with
Other modifications and alterations will occur to others upon their reading and understanding of the specification. It is intended that all such modifications and alterations be included insofar as they come within the scope of the invention as claimed or the equivalents thereof.
This application is a divisional of U.S. application Ser. No. 11/868,021, filed Oct. 5, 2007, (issued as U.S. Pat. No. 8,340,824 on Dec. 25, 2012), which is fully incorporated herein by reference.
The U.S. Government has a paid-up license in this invention and the right in limited circumstances to require the patent owner to license others on reasonable terms as provided for by the terms of Contract No. DE-FC26-04NT41768, awarded by the United States Department of Energy.
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Number | Date | Country | |
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20130018831 A1 | Jan 2013 | US |
Number | Date | Country | |
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Parent | 11868021 | Oct 2007 | US |
Child | 13606311 | US |