The present disclosure relates to methods, systems, and computer-readable media for monitoring efficiency and operational mode changes of combustion equipment.
Combustion equipment, such as boilers and furnaces, can be used to transfer heat from one medium to another medium to generate power and/or heat. Efficiency of combustion equipment can include a relation of energy input to energy output. For example, efficiency of combustion equipment can be indicated by combustion efficiency, thermal efficiency, and/or fuel-to-fluid efficiency.
The efficiency (e.g., the efficiency of the combustion process) of the equipment can be reduced by faults and/or degradation in the equipment. Faults can include sudden events that rapidly decrease performance of combustion equipment. Degradations can include slow changes to the combustion equipment that cause degradation of performance of the equipment. For example, degradations can cause an increased input fuel at the same output performance (e.g., efficiency decrease).
Efficiency can be monitored to identify and/or prevent faults and/or degradation of combustion equipment. For instance, monitoring the efficiency can improve equipment performance, reduce levels of harmful emissions by the equipment, and/or extend the stability of the equipment, among other benefits. Further, the combustion equipment can be monitored to comply and/or assist in complying with environmental regulations and/or various regulatory codes.
Monitoring efficiency of combustion equipment, however, can be difficult due to incomplete measurements caused by various instrumentation set in applications of the combustion equipment. Further, a number of variables used to calculate an efficiency may be unknown, such as liquid mass flow. Further, the output of the efficiency may be calculated and/or represented in technical units that may be difficult for a user to understand.
Methods, systems, and computer-readable media for monitoring efficiency and operational mode changes of combustion equipment are described herein. For example, one or more method embodiments can include determining an unscaled efficiency signal of combustion equipment using data measured from the combustion equipment, determining a theoretical efficiency signal of the combustion equipment using a theoretical efficiency surface of the combustion equipment and a subset of the measured data, and normalizing the unscaled efficiency signal using values from a correlated portion of the theoretical efficiency signal to monitor efficiency of the combustion equipment.
Monitoring the efficiency of combustion equipment in accordance with the present disclosure can identify and/or prevent faults and/or degradation of the combustion equipment. As previously discussed, efficiency can be indicated by combustion efficiency, thermal efficiency, and/or fuel-to-fluid efficiency (also known as overall efficiency). Combustion efficiency can indicate an efficiency of the combustion process, which can include an ability of a burner to burn fuel measured by unburned fuel and excess air in the exhaust, combustion losses due to hydrogen in fuel, and/or other aspects influencing the efficiency of the fuel combustion.
Thermal efficiency can indicate the effectiveness of a heat exchanger to transfer heat from the combustion process to the liquid (e.g., water) or steam in the boiler, radiation and convention losses, and/or other aspects influencing the heat exchange between the combustion chamber of the combustion equipment and the target energy distribution medium (e.g., hot water distribution circuit). Fuel-to-fluid efficiency can indicate an overall efficiency of the boiler inclusive of the thermal efficiency and the combustion efficiency.
Prior approaches for determining efficiency of combustion equipment can include attaching special instrumentation to the combustion equipment that can collect data from the combustion equipment. However, measurements made by the special instrumentation can be incomplete. Further, a number of variables used to determine the efficiency may be unknown, and/or the resulting efficiency may be represented in difficult to understand technical units. Further, due to the cost of the special instrumentation, the determination may be made only once per a period of time (e.g., once or twice a year).
As such, the prior approaches may be ineffective at identifying and/or preventing degradations in combustion equipment. For example, prior approaches may take measurements only once or twice a year to determine efficiency, and the determination can include the use of unknown variables, which may not provide enough data points to identify and/or prevent a degradation and/or faults of the combustion equipment, for example.
In contrast, embodiments in accordance with the present disclosure can include methods, systems, and computer-readable and executable media for monitoring efficiency that uses existing sensors attached to the combustion equipment to monitor the efficiency of the combustion equipment. For example, the existing sensors can include temperature sensors used in the combustion equipment control (e.g., feedback control). The sensors can measure data from the combustion equipment periodically and/or continuously. The measured data can be used to determine an unscaled efficiency signal of the combustion system.
The unscaled efficiency signal can be compared to a theoretical efficiency signal and normalized based on the comparison to create a normalized efficiency that is in physical units. For instance, physical units can include a value (e.g., %, degrees, etc.) that can be used for relative and absolute assessment. Physical units may be defined using various systems of units, such as the International System of Units (SI) and/or the imperial system of units, etc. Technical units, by contrast, can include a value that can be used for relative assessment (but not absolute assessment) and can reflect the actual efficiency of the combustion equipment. The theoretical efficiency can be determined using offline data, such as manufacturer data for the combustion equipment (e.g., datasheets and commissioning data) or data measured from the combustion equipment from a previous period of time.
By using existing sensors and comparing an unscaled efficiency signal to a theoretical efficiency signal, embodiments in accordance with the present disclosure can be used to easily and/or cheaply identify and/or prevent degradations and/or faults. For instance, the existing sensors are relatively inexpensive, and the monitoring can be performed more often than compared to prior approaches.
Monitoring the combustion equipment more often can result in more data points and can assist in identifying and/or preventing degradations and/or faults, such as small changes in efficiency. Further, using offline data can increase accuracy and can result in an output value in physical units. An efficiency in physical units can be easier for a user to understand than technical units.
In addition, a number of embodiments can include providing a performance indicator that indicates an operational mode change in the combustion equipment. An operational mode change can include an increase in fuel consumption and can occur as a result of control strategy changes, faults, and/or changes to input variables, as discussed further herein. The performance indicator can be provided in response to a change in an identified parameter from measured data as compared to a baseline parameter. In some embodiments, the performance indicator can be provided in response to an expected fuel consumption meeting or exceeding a threshold change from measured fuel consumption.
These embodiments are described in sufficient detail to enable those of ordinary skill in the art to practice one or more embodiments of this disclosure. It is to be understood that other embodiments may be utilized and that process, electrical, and/or structural changes may be made without departing from the scope of the present disclosure.
As will be appreciated, elements shown in some embodiments herein can be added, exchanged, combined, and/or eliminated so as to provide a number of additional embodiments of the present disclosure. The proportion and the relative scale of the elements provided in the figures are intended to illustrate the embodiments of the present disclosure, and should not be taken in a limiting sense.
The figures herein follow a numbering convention in which the first digit or digits correspond to the drawing figure number and the remaining digits identify an element or component in the drawing. Similar elements or components between different figures may be identified by the use of similar digits. For example, 104 may reference element “04” in
As used herein, “a” or “a number of” refers to one or more. For example, “a number of sensors” can refer to one or more sensors. Additionally, the designator “N” as used herein, particularly with respect to reference numerals in the drawings, indicates that a number of the particular feature so designated can be included with embodiments of the present disclosure.
Combustion equipment, as used herein, can include a number of devices and/or components that convert and/or assist in the conversion of heat from one medium to another. Example combustion equipment can include boilers and/or furnaces.
A sensor, as used herein, can include any suitable device that measures and/or takes a physical quantity. In some embodiments, the number of sensors 106-1 . . . 106-N can include existing sensors that are connected to the combustion equipment 110 (e.g., are connected with or without the efficiency monitoring system). For example, the number of sensors 106-1 . . . 106-N can exist for combustion equipment control. In some embodiments, the number of sensors 106-1 . . . 106-N can include a fuel consumption sensor, as discussed further herein.
The number of sensors 106-1 . . . 106-N can, for example, measure data (e.g., online data) from the combustion equipment 110. The data can include temperature of supply liquid, temperature of return liquid, firing rate of the combustion equipment, and, in some embodiments, fuel consumption. The measured data can include online data, in some embodiments. Online data, as used herein, can include data measured directly from the combustion equipment 110 and/or actual values of internal parameters (e.g., inputs to and outputs from a controller 187) not directly associated with a sensor measurement. The sensors 106-1 . . . 106-N can output measurements (e.g., sensor measurements) to a controller 187, as discussed further herein.
The number of sensors 106-1 . . . 106-N can send and/or allow a device to retrieve the measurements that are made for combustion equipment control (e.g., boiler control). The data can be measured periodically, such as once a day, every 15 minutes, every 5 seconds, etc.
Although not shown in
The memory can be volatile or nonvolatile memory. The memory can also be removable (e.g., portable) memory, or non-removable (e.g., internal) memory. For example, the memory can be random access memory (RAM) (e.g., dynamic random access memory (DRAM) and/or phase change random access memory (PCRAM)), read-only memory (ROM) (e.g., electrically erasable programmable read-only memory (EEPROM) and/or compact-disc read-only memory (CD-ROM)), flash memory, a laser disc, a digital versatile disc (DVD) or other optical disk storage, and/or a magnetic medium such as magnetic cassettes, tapes, or disks, among other types of memory. Further, the memory can be located in the computing component, or internal to another computing component (e.g., enabling computer readable instructions to be downloaded over the Internet or another wired or wireless connection).
The computing component 104 can be in communication with the number of sensors 106-1 . . . 106-N, the combustion equipment 110, the controller 187, and/or the offline database 102 via a communication path. The communication path, in some embodiments, can include a wireless and/or wired communication between the computing component 104 and the sensors 106-1 . . . 106-N, the combustion equipment 110, the controller 187, and/or the offline database 102. For instance, the communication path can be such that the computing component 104 is remote from the sensors 106-1 . . . 106-N, the combustion equipment 110, the controller 187, and/or the offline database 102 such as in a network relationship between the computing component 104 and the sensors 106-1 . . . 106-N, the combustion equipment 110, the controller 187, and/or the offline database 102. That is, the communication path can be a network relationship. Examples of such a network relationship can include a local area network (LAN), wide area network (WAN), personal area network (PAN), and the Internet, among others.
The computing component 104 can, in some embodiments, be located remotely from the number of sensors 106-1 . . . 106-N. For instance, the number of sensors 106-1 . . . 106-N can communicate measured data to the computing component 104, the controller 187 and/or the offline database 102 using a network communication. As an example, the computing component 104 can be located with the offline database 102.
The medium can include instructions executable by a processing resource to cause the computing component to perform a number of functions as discussed further in connection with
Alternatively and/or in addition, the computing component can be internal to a controller 187 of the combustion equipment and/or other combustion equipment, as illustrated by internal computing component 105. For example, the internal computing component 105 can be internal to a boiler in a number of embodiments.
A controller 187 can include a device (such as a microprocessor or computing device) that monitors and alters the operating conditions of the combustion equipment 110 (e.g., controls temperature, actuator positions, etc.). For example, the number of sensors 106-1 . . . 106-N can be connected to the controller 187 of the combustion equipment 110.
As illustrated by
The controller outputs 107-1, 107-P, as illustrated by
The controller outputs 107-1, 107-P can be determined by the controller 187 using the inputs from the number of sensors 106-1 . . . 106-N (e.g., sensor measurements) and a number of controller inputs 111. The number of controller inputs 111 can include setpoints, overrides, and/or controller settings, among other inputs.
In various embodiments, the offline database 102 can be used for storing the various types of data from the controller 187. For example, the sensor measurements, controller outputs 107-1, 107-P, and/or controller inputs 111 can be stored on the offline database 102. The computing component (e.g., computing component 104 or internal computing component 105) can run against the offline database 102, can be a part of the controller 187, and/or other combustion equipment (e.g., a boiler display).
Further, in some embodiments, the internal computing component 105 can include an appliance display. For instance, the appliance display can act as a user interface of the controller 187 and/or other combustion equipment. A user can adjust settings and readout status, diagnostics, etc. The display can illustrate text, numbers, graphs, etc. For instance, showing the evolution of some parameters over time can be useful for monitoring degradation and/or faults.
The offline database 102 can include a database that is remotely located from the combustion equipment 110 and the number of sensors 106-1 . . . 106-N. The offline database 102 can contain offline data. For example, the offline data can include data from a manufacturer and/or data (e.g., online data) measured from the combustion equipment during a previous period of time. Further, in some embodiments, the offline data can include a theoretical efficiency surface of particular combustion equipment, as discussed further herein.
The process 212 can include using online data 216 and offline data 218. As previously discussed, the online data 216 can include measurements from a number of sensors 206 connected to the combustion equipment and/or actual values of internal parameters not directly associated with a sensor output. For example, the online data can include status information (e.g., whether equipment is in a run or idle mode), temperature setpoint, percentage of modulating values, speed of a fan, etc. The online data 216 can be directly from the number of sensors 206 and/or retrieved from an offline database 202. The offline data 218 can include manufacturer data and/or previously measured online data.
The online data 216 and offline data 218 can be processed by a data preparation module 220 to determine available data points 222. The data points 222 can include a number of measured values at particular periods of time.
One or more computing components (e.g., the computing component 204) can be used to monitor efficiency of the combustion equipment. For example, the process 212 can include a method selection 224, identifying other indicators 226, heat exchange effectiveness 228, combustion efficiency 230, and overall efficiency 232. The overall efficiency 232 can include normalizing an unscaled efficiency signal, as discussed further in connection with
Although not illustrated by
The process 340 can include inputting online data 316 measured using a number of sensors. The online data 316 can be received by the computing component from the number of sensors connected to the combustion equipment and/or can be retrieved from an offline database. As previously discussed, the online data can include sensor measurements (e.g., sensor outputs) and/or actual values of internal parameters not directly associated with a sensor measurement (e.g., controller outputs). The online data can be prepared, at block 320-1, for further processing, as previously discussed.
As illustrated by the embodiment of
In some embodiments, the fuel consumption may not be directly measured using the number of sensors. For instance, the fuel consumption can be determined using other measured online data. Alternatively, the fuel consumption can be measured using a fuel consumption sensor (e.g., a flow sensor).
At block 342, an unscaled efficiency signal 341 can be determined using the online data 316 measured from the combustion equipment. An unscaled efficiency signal, as used herein, can include an estimated efficiency of the combustion equipment over a period of time. As illustrated by
In some embodiments, although not illustrated by
The direct method can be used to determine the unscaled efficiency signal 341 which resembles the efficiency, in some embodiments. An unscaled efficiency signal 341 is generally not in physical units and can be in technical units. For instance, technical units can include a value that can be used for relative assessment (but not absolute assessment) and can reflect the actual efficiency of the combustion equipment.
To determine the unscaled efficiency signal 341, four data points are used: temperature of supply liquid, temperature of return liquid, fuel consumption, and fuel mass flow. An example direct method function can include:
Wherein ncomp includes the determined unscaled efficiency signal 341, mw includes liquid mass flow, mfuel includes fuel consumption, and a can include a ratio of the specific heat constant of a liquid (e.g., water) and the high heating value (HHV) of a fuel (e.g., natural gas). However, the actual change of HHV is practically unknown and therefore HHV is approximated by a constant (e.g., given by a utility company). ΔT can include the change in liquid temperature before and after the combustion equipment (e.g., supply liquid temperature minus return liquid temperature). The signal 341 can be determined by calculating a value for unscaled efficiency of the combustion equipment over time (e.g., a data point for each time a measurement is made).
However, liquid mass flow mw may not be measured as it can be difficult to identify. Rather mw can be considered as a mean value and the term (a*mw) can become a constant under the following assumptions: mw is dependent on a speed of the combustion equipment (e.g., a pump), and system response which consist of properties of a liquid distribution system (e.g., hydraulic resistance).
If liquid mass flow mw changes (e.g., is not constant) unexpectedly, then ΔT may also change. This can result in an unexpected change in determined efficiency, which can be detected. In response to the change, a user may be advised to check the combustion equipment.
In some embodiments, mfuel can be estimated using the firing rate of the combustion equipment. For example, estimating fuel consumption using the firing rate of the combustion equipment is described by the concurrently filed application of Petr Endel, Donald Kasprzyk, David Kucera, and Gregory Young, titled “Valve Controller Configured to Estimate Fuel Consumption”, U.S. application Ser. No. 14/521,154, filed on Oct. 22, 2014, which is a continuation-in-part of U.S. application Ser. No. 13/326,691, titled “Gas Valve with Fuel Rate Monitor”, filed on Dec. 15, 2011 the full disclosure of which are both incorporated herein by reference. Alternatively, mfuel can be measured using a fuel consumption sensor.
As further illustrated by
The offline data 318 can identify controller settings, commissioning data, datasheet parameters, etc. For example, the offline data 318 can include a table of efficiency of the combustion equipment at a variety of firing rates and temperatures of return liquid from the manufacturer. The offline data 318 can be prepared, at block 320-2, for further processing, as previous discussed.
For example, using the offline data 318, a theoretical efficiency surface 346 of the combustion equipment can be identified. The identification can include determining the theoretical efficiency surface 346 and/or retrieving the theoretical efficiency surface 346 from an offline database.
A theoretical efficiency surface 346, as used herein, can include a digital representation of theoretical efficiency of combustion equipment at various operating conditions (e.g., firing rate and return liquid temperature). For example, the theoretical efficiency surface 346 can include a grid reflecting the efficiency of the undegraded (e.g., ideal) combustion equipment at time of commissioning. In some embodiments, the theoretical efficiency surface 346 can include a three-dimensional grid of return liquid temperature on the X-axis, firing rate on the Z-axis, and efficiency on the Y-axis.
In some embodiments, the theoretical efficiency surface 346 can be determined using the offline data 318. The theoretical efficiency surface 346 can be determined using the manufacturer's datasheet identifying return liquid temperature at a variety of firing rates of the undegraded combustion equipment and/or previously measured data (e.g., online data) that is measured when the combustion equipment is installed (e.g., and likely undegraded).
Alternatively and/or in addition, the theoretical efficiency surface 346 of a particular piece of combustion equipment can be retrieved from an offline database. For example, the theoretical efficiency surface 346 can be determined prior to the monitoring process 340 (e.g., at a different time) and stored on the offline database. Alternatively, the theoretical efficiency surface 346 can be determined from another sources and stored on the offline database.
In some embodiments, the identified theoretical efficiency surface 346 can be extrapolated to cover a wider range of operating conditions than the theoretical efficiency surface 346 covers. Extrapolating the theoretical efficiency surface 346 can include approximating the efficiency at a wider range of firing rates and return liquid temperatures than in the theoretical efficiency surface 346. The extrapolated theoretical efficiency surface can be used to determine the theoretical efficiency signal, as discussed further herein.
Alternatively and/or in addition, the identified theoretical efficiency surface 346 can be extrapolated and interpolated between the grid vertices to determine the theoretical efficiency for any combination of return liquid temperature and firing rate values. For example, the extrapolated and interpolated theoretical efficiency surface can be used to determine the theoretical efficiency signal.
At block 344, a theoretical efficiency signal 343 can be determined using the theoretical efficiency surface 346 and a subset of the measured online data 316. The theoretical efficiency signal 343 can include a theoretical estimate of the efficiency over a period of time. The theoretical efficiency signal 343 can include a signal in physical units that can be used for relative and absolute assessment of the combustion equipment.
As illustrated by
At block 348, the unscaled efficiency signal 341 can be compared to the theoretical efficiency signal 343 to identify a common pattern. The common pattern can include a correlation (e.g., a threshold correlation) between a time series (e.g., a portion) of the theoretical efficiency signal 342 and a time series of the unscaled efficiency signal 341.
Common patterns can be identified using a variety of similarity measures. For example, a common pattern can be identified in response to a similarity measure meeting or exceeding a predefined threshold value (e.g., 0.85). Example similarity measures can include Pearson's correlation, mean similarity, root mean square similarity, peak similarity, cosine similarity, Kendall's correlation, and/or Spearman's correlation, among other measures.
For example, if the similarity measure meets or exceeds the threshold value, the output can be 1 (meaning “correlated”). If the similarity measure does not meet or exceed the threshold value the output can be 0 (meaning “uncorrelated”). In response to an output of 1, a similarity 345 can be identified.
At block 350, the unscaled efficiency signal 341 can be normalized using values from a correlated portion of the theoretical efficiency signal 343 to monitor efficiency of the combustion equipment. The correlated portion can be within the identified common pattern, for example. That is, the correlated portion of the theoretical efficiency signal 343 can include a common pattern with a portion of the unscaled efficiency signal 341.
The normalization can output (e.g., create) a normalized efficiency signal nNorm 352 that is in physical units and/or reflects a true efficiency of the combustion equipment. For example, as illustrated further in connection with
In some embodiments, the process 340 can include outputting an error message in response to not identifying a common pattern. For instance, a computing component can output the error message and/or not perform the normalization in response to not identifying the common pattern.
As illustrated by the embodiment of
The signals 441, 443 can be compared using similarity measures to identify correlated portions. The comparison can be illustrated by a graph 462 with time 456 on the X-axis and similarity measures 445 on the Y-axis. Portions of the graph 462 that have a similarity measure 445 that is greater than a threshold value (e.g., 0.85) can include a common pattern/correlated.
As illustrated by
For illustrative purposes,
As previously discussed, the normalization can include an adjustment of coefficients for a range 565 of the unscaled efficiency signal 541 to a range 567 of the theoretical efficiency signal 543. In addition, the normalization can include an adjustment of coefficients for a bias 566 of the unscaled efficiency signal 541 to a bias 568 of the theoretical efficiency signal 543. The normalization can include an output, for instance, of a normalized efficiency signal that is in physical units.
Embodiments in accordance with the present disclosure are not limited to constructing a graph as illustrated by
As illustrated by
The fan-valve-controller subsystem 610-1 can include a controller 687, a valve 688, and a fan 690 (and, in some embodiments, a damper). The controller 687 can control the position of the valve 688, speed of the fan 690, and/or position of the damper. Based on the various controlled positions and/or speeds, fuel 681 can be input to the burner 692 of the boiler 610-2. The rate of fuel input can be controlled by the value position, damper position, and/or speed of the fan 690.
The fan 690 can include variable-frequency drive (VFD) fan or a constant-frequency drive (CFD) fan, among other fans. For instance, a CFD fan can include a damper. Combustion air (e.g., outdoor air) can be input to the VFD fan and sent to the boiler 610-2 or input to the CFD fan, sent to the damper, and then sent to the boiler 610-2.
As illustrated by
The controller 687 can determine a difference in the supply water temperature Tsw 684 and a supply water temperature setpoint Tswsp 685 (e.g., ΔT). The supply water temperature setpoint 685 (e.g., TSWSP) can be a constant number set-up during commissioning or it can be a variable number determined by the controller 687, e.g., based on outdoor temperature, schedule, etc.
For example, the difference between both temperatures (i.e. temperature deviation from setpoint) is determined (e.g., calculated) by the controller 687. Based on the difference, the controller 687 can perform a control action (e.g., increase/decrease of fan speed or open/close a damper).
In accordance with some embodiments, the controller 687 can determine a valve position UV, a fan speed UF, and/or a damper position UD using measured data (e.g., online data) and fuel-air-ratio tables 689 based on the firing rate of the combustion equipment. For example, the fuel-air-ratio tables 689 can be stored on the controller 687.
The controller 687 and/or an external computing component can monitor the fan-valve-controller subsystem 610-1 to identify a parameter and/or a fuel consumption model using data measured (e.g., online data) and provide a performance indicator based on a comparison of the parameter/the fuel consumption model to a baseline parameters/baseline fuel consumption model of the combustion equipment, as discussed in connection with
For instance, the process 701 can be used to provide a performance indicator. A performance indicator, as used herein, can include an indication of an operational mode change in the combustion equipment. An operational mode change can include an (e.g., unexpected or unnecessary) increase in fuel consumption and can occur as a result of control strategy changes, faults, and/or changes to input variables, as discussed further herein.
For example, control strategy changes can include fuel-air-ratio modifications. A maintenance technician, for instance, may change the valve position as a function of load (e.g., firing rate) resulting in higher fuel consumption at the same firing rate.
Example faults can include a faulty valve, a damaged fan, and/or a faulty damper. A faulty valve can result in issues in opening or closing the valve, a leaking valve, etc. A damaged fan can be due to a bearing fault or degraded fan efficiency. And, a faulty damper (in embodiments of CFD fans) can include issues in moving the damper (e.g., a stuck damper).
Changes of input variables can include a change in fuel pressure, fuel temperature, and/or fuel (e.g., in the case of dual-fuel systems). Changes in input variables can result in a change in fuel consumption.
The performance indicator can be provided in response to a change in an identified parameter from measured data (e.g., online data) as compared to a baseline parameter. Alternatively and/or in addition, the performance indicator can be provided in response to an expected fuel consumption determined using an updated fuel consumption model and/or a baseline fuel consumption model including a threshold change from measured fuel consumption. The performance indicator can include an absolute value or a normalized value.
For example, the process 701 can include identifying a parameter from data measured, at block 717. The data measured, as previously discussed, can be online data measured using a number of sensors connected to the combustion equipment.
The parameter can include an indication of performance of the combustion equipment. For example, the parameter can include a slope of a fuel consumption model. A fuel consumption model, as used herein, can include a relationship between the firing rate and the fuel consumption of the combustion equipment.
As previously discussed, the firing rate can be output from the controller. For example, the firing rate can include how much heat to add to the supply liquid.
The data can include measured fuel consumption 705 and firing rate 707 of the combustion equipment. The number of sensors can include temperature sensors, a fuel consumption sensor (to measure the fuel consumption 705), and/or a controller (to output a firing rate).
The measured data can be used to update a fuel consumption model, at block 719. For instance, the fuel consumption model can include a model of fuel consumption that is updated using current data measured from the combustion equipment.
In some embodiments, as illustrated by
To monitor efficiency of the combustion equipment, the parameter identified can be compared to a baseline parameter of a baseline fuel consumption model. Alternatively and/or in addition, an output of the updated fuel consumption model and/or a baseline fuel consumption model (e.g., fuel consumption expected using each respective model) can be compared to a measured fuel consumption of the combustion equipment.
A baseline fuel consumption model can include a model of fuel consumption that is determined during a reference period 703. A reference period, as used herein, can include a period of time when the combustion equipment is known to be and/or likely to be operating efficiently (e.g., undegraded/not faulty). For example, a reference period can include when the combustion equipment is installed or commissioned.
The baseline parameter can include an indication of performance of the combustion equipment during the reference period 703. The baseline fuel consumption model can be stored (e.g., on the controller and/or a remote computing component) and not updated.
In some embodiments, the baseline fuel consumption model 709 can be determined, at block 713, using data measured (e.g., online data measured using the number of sensors) during the reference period of time 703. For instance, the baseline fuel consumption model 709 and the fuel consumption model (e.g., the local fuel consumption model 715) can be determined using a consumption model. An example consumption model can include a linear polynomial model such as:
m
Fuel
=a
1
*FR+b,
wherein mFuel can include fuel consumed for a particular equipment (e.g., a boiler), a1 includes a slope, and FR includes a firing rate for the particular equipment. Another example can include:
M
Fuel
=a
1
*FR+ . . . a
N
*FR
N,
wherein N includes a model order.
Further, the baseline parameter can be identified, at block 711. For instance, the baseline parameter can include a slope of the baseline fuel consumption model 709 and the identified parameter can include a slope of the updated fuel consumption model (e.g., the updated local fuel consumption model 715). The parameters can be identified using a recursive identification method (e.g., a Kalman filter and/or a particle filter) on the respective models.
A performance indicator of the combustion equipment can be provided in response to an abrupt change and/or a gradual change. For example, at block 721, an abrupt change can be identified (e.g., via a performance indicator) in response to an output of the updated fuel consumption model (e.g., local fuel consumption model 715) and/or the baseline fuel consumption model 709 meeting or exceeding a threshold change from measured fuel consumption. The threshold change can include a threshold difference in an output (e.g., expected fuel consumption) of the fuel consumption model and/or the baseline fuel consumption model 709 as compared to measured fuel consumption (e.g., actual fuel consumption) of the combustion equipment.
At block 723, a gradual change can be monitored/identified (e.g., via a performance indicator) in response to the identified parameter meeting or exceeding a threshold change from the baseline parameter. The threshold change can, for example, include a threshold change in the slope of the updated fuel consumption model (e.g., local fuel consumption model 715) as compared to slope of the baseline fuel consumption model 709.
At block 725-1 and/or 725-2, in response to an identified abrupt change and/or gradual change, the performance indicator can be provided. The provided performance indicator can include an alert, such as an alarm and/or a warning. Providing an alert, as used herein, can include providing a message on a user interface of a computing component, sending an email to a user, providing a visual or audio indication (e.g., a beeping sound, flashing message stating “alarm”, etc.), and/or sending a text message to a cellphone of a user, among other alarms/warnings. In some embodiments, the alert can include generating a report.
However, as previously discussed, embodiments are not limited to comparing parameters. For example, embodiments can include comparing each model (e.g., the expected output of the updated fuel consumption and the baseline fuel consumption model) to a measured fuel consumption.
As illustrated by
A portion 835 of the line 833 plotted can represent an identified performance indicator. For instance, the portion 835 of the line 833 can illustrate an increase in fuel consumption as compared to prior times. The increase in fuel consumption can indicate an operational mode change (e.g., a performance indicator). Said differently, the portion 835 of the line 833 can illustrate an increase of the identified parameter a caused by an operation mode change, which can result in an unexpected increase of fuel consumption.
In some embodiments, as illustrated previously by
Although
As used herein, “logic” is an alternative or additional processing resource to execute the actions and/or functions, etc., described herein, which includes hardware (e.g., various forms of transistor logic, application specific integrated circuits (ASICs), etc.), as opposed to computer executable instructions (e.g., software, firmware, etc.) stored in memory and executable by a processor.
Although specific embodiments have been illustrated and described herein, those of ordinary skill in the art will appreciate that any arrangement calculated to achieve the same techniques can be substituted for the specific embodiments shown. This disclosure is intended to cover any and all adaptations or variations of some embodiments of the disclosure.
It is to be understood that the above description has been made in an illustrative fashion, and not a restrictive one. Combination of the above embodiments, and other embodiments not specifically described herein will be apparent to those of skill in the art upon reviewing the above description.
The scope of some embodiments of the disclosure includes any other applications in which the above structures and methods are used. Therefore, the scope of some embodiments of the disclosure should be determined with reference to the appended claims, along with the full range of equivalents to which such claims are entitled.
In the foregoing Detailed Description, various features are grouped together in example embodiments illustrated in the figures for the purpose of streamlining the disclosure. This method of disclosure is not to be interpreted as reflecting an intention that the embodiments of the disclosure require more features than are expressly recited in each claim.
Rather, as the following claims reflect, inventive subject matter lies in less than all features of a single disclosed embodiment. Thus, the following claims are hereby incorporated into the Detailed Description, with each claim standing on its own as a separate embodiment.