This invention pertains generally to the monitoring of components of an asset and, more particularly, to a system and method for providing diagnostic and prognostic analysis of the health of the component based on measurements of one or more metrics corresponding to operational characteristics of the component.
Complex assets, such as commercial and military vehicles, ships, aircraft, generator sets, industrial equipment, and other electromechanical systems, require regular maintenance to ensure that the systems continue to function properly. Often, critical components of these systems experience a higher degree of stress and/or wear, or are more susceptible to failure than other components. Accordingly, such critical components may be subject to more frequent maintenance and repair.
A light armored vehicle (LAV) is an example of a complex electromechanical system that includes critical components. LAV's typically are 8×8 wheeled, diesel-powered, lightly armored vehicles that can be employed in a wide range of military missions. For instance, in addition to providing other combat and combat support functions, LAV's can transport personnel, provide a weapons platform, function as a command-and-control vehicle, and perform logistical and recovery tasks. To further enhance their versatility, LAV's are designed and equipped to operate in a wide range of environments and terrains. For example, LAV's can travel on paved or unpaved roads, on hilly or level terrain, on wet or dry terrain, on- or off-road, etc. As such, the utility of LAV's depends significantly on their drive systems, which enable the LAV's to operate on most types of terrain. On the other hand, the all-terrain nature of LAV's places significant physical demands on the drive system.
Specifically, LAV's typically employ eight wheels including four wheels that are driven full time by the two rear axles and four wheels that can be optionally driven by the two front axles. All the wheels are coupled to the drive system, via wheel planetaries. In general, each planetary includes a central sun gear, a plurality of planet gears that orbit and mesh with the sun gear, and an outer ring with inner teeth that surround and mesh with the planet gears. The axle can drive the sun gear which then drives, via the planet gears, the outer ring and the wheel coupled to the outer ring. Proper functioning of the drive system, and of the LAV overall, depends on the health of these planetaries. Therefore, the planetaries are critical components that may be subject to more frequent maintenance and repair. Although LAV's can be repaired when failure of a planetary occurs, this reactive approach to maintenance requires unplanned downtime for the LAV. Such unplanned downtime can negatively impact execution of a military mission when the LAV is not available as expected or required by precise logistical planning. In addition, it may be difficult to prepare for, and respond effectively to, unexpected equipment failures, particularly when they occur in the field or battlefield. Even when scheduled maintenance is employed to take an LAV temporarily out of service and check the health of LAV components, including the planetaries, the frequency of these check-ups is limited by practical considerations. As a result, problems may not be identified in time to enable preventive action and to avoid major repairs and prolonged downtime.
To address the shortcomings of the approaches described previously, embodiments of the present invention provide an improved system and method that enables constant monitoring and proactive maintenance of components in an asset. Advantageously, the embodiments limit unplanned downtime and improve logistical planning by providing warnings as soon as problems with a component can be detected or predicted. With these warnings, corrective actions can be taken to prevent complete failure of the component and/or to prolong the service life of the electromechanical system. In some cases, because a warning can be provided well before failure, repairs and other corrective actions can be planned and logistical adjustments can be made in advance to minimize the impact of downtime. In other cases, the component has a finite operational life, but early warning enables arrangements to be made to retire and replace the asset.
Accordingly, in one embodiment, a sensor network provides a collection of metrics from a plurality of components of an asset. The collection of metrics includes a set of metrics corresponding to each component, and the set of metrics measures at least one operating characteristic of the corresponding component. A component algorithm processing system receives the collection of metrics and determines a relationship between each set of metrics corresponding to each component and the collection of metrics corresponding to the plurality of components. The component algorithm processing system then determines if the relationships indicate a health problem with at least one of the components.
For example, particular embodiments may provide diagnostic and prognostic analysis of the health of the LAV planetaries described previously. A LAV has a plurality of planetaries, e.g., eight planetaries, each of which can be mounted with a sensor that continuously samples the temperature of the planetary. The temperature of a planetary provides an indicator of the health of the planetary. Temperature measurements from the plurality of pluralities provide a running statistical basis for quickly identifying outlier temperature measurements that indicate that a problem exists with the corresponding planetary. The temperature measurements can be further analyzed to determine sensor faults as well as the remaining life and the short-term and long-term health of each planetary. Because the temperature measurements are collected from a plurality of similar planetaries subject to similar, or substantially similar, operating conditions, the analysis of each planetary relative to the plurality of planetaries does not have to account for the operating conditions and is thus independent of operating context.
Aspects of the present invention, for instance, may be employed as a part of a system, known as an Asset Health Management (AHM) system. The AHM provides a framework for building health monitoring systems. The AHM can read data from a sensor network, run multiple levels of data processing algorithms to identify any system anomalies, and make diagnostic and prognostic assessments. The AHM system can be applied to military and non-military platforms, such as ships, aircraft, and ground vehicles, to enhance command and control effectiveness, improve maintenance and supply logistics, and reduce operations and support costs.
These and other aspects of the present invention will become more apparent from the following detailed description of the preferred embodiments of the present invention when viewed in conjunction with the accompanying drawings.
Embodiments of the present invention provide an improved system and method that enables constant monitoring and proactive maintenance of components in an asset, such as a complex electromechanical device or vehicle. The embodiments collect data regarding one or more of the component's operational characteristics and analyze this data to determine the current and projected health of the component.
To illustrate aspects of the present invention, a planetary diagnostic-prognostic system (PDPS) for analyzing the health of planetaries of light armored vehicles (LAV's) is described. A LAV typically employs eight wheels that are coupled to the rest of the drive system via wheel planetaries. As shown in
Temperature measurements from the plurality of planetaries provide a running statistical basis for quickly identifying sensor faults and outlier temperature measurements that indicate a problem with the corresponding planetary. The outlier data may indicate that the health of one of the planetaries is deteriorating or is experiencing another problem, such as an oil leak. In the example embodiment, the PDPS employs an outlier-detection algorithm with the data from all planetaries to can detect small deviations (anomalies) in the temperature data corresponding to one of the planetaries.
In general, the planetaries are all similar and are subject to substantially similar operating conditions, i.e., operating context. In this case, when an outlier is identified from the temperature measurements of all of the planetaries, the operating conditions can generally be ruled out as a cause for this outlier. As a result, the PDPS is advantageously employing an approach that is independent of operating context.
Referring now to
In the data gathering steps 110, speed data 112 is collected for the LAV, and temperature data 114 is collected for the planetaries on the LAV. The temperature data 114 is measured at locations where it is feasible to mount temperature sensors. However, it may not be feasible to collect temperature data 114 directly from desired locations, i.e., the actual points of interest, on the planetaries. For example,
Referring again to
As further shown in
To detect sensor faults in step 134, the PDPS first calculates temperature correlations in step 132. In particular, step 132 computes statistical cross-correlations ρxy for collected temperature data between each of the planetaries, e.g., eight planetaries. The computation of cross-correlations ρxy includes computing means μN and standard deviations σN of temperature measurements x and y over N samples for two respective planetaries. Standard iterative algorithms, for example, may be employed to compute μN, σN2 and ρxy:
As the cross-correlations ρxy measure the relationship between the temperature data collected by two sensors subject to substantially similar operating contexts, a low cross-correlation may indicate a fault with a sensor. As such, step 134 detects sensor faults by applying thresholds on the cross-correlations computed in step 132.
Ideally, the time to detect a failure of a planetary temperature sensor is as short as possible, while the number of false alarms regarding the failure of a planetary temperature sensor is as low as possible. A low rate of false alarms indicates a high accuracy in the failure detection. However,
Assuming that there are no sensor faults on any of the planetaries, step 136 as shown in
An example process for computing outlier characteristics r in step 136 is outlined as substeps 137A-G in
For each of the eight planetaries i, substep 137B computes the difference ΔiT, over a sampling period, tstart to tend, between each sampled temperature Ti and the mean temperature μT for the corresponding sample time t:
From the differences ΔiT computed in substep 136B, the maximum difference is identified in substep 137C. The maximum difference corresponds to a planetary k of the eight planetaries i and is a potential outlier:
Substep 137D recomputes the mean μT1 at each given sample time t for all of the planetaries i except for the planetary k corresponding to the potential outlier identified in substep 137C:
For each of the eight planetaries i, substep 137E computes the difference ΔiT1 over the entire sampling period between each sampled temperature Ti and the mean temperature μT1 calculated in step 137D at the corresponding sample time t:
Excluding the largest difference corresponding to i=k, substep 137F computes the standard deviation σr for the differences ΔiT1 calculated in step 137E:
Determining the ratio between the largest difference ΔiT1 corresponding to i=k and the standard deviation σr computed in substep 137F, substep 137G computes the outlier characteristic r:
The outlier characteristic r provides an indicator of the health of the planetary corresponding to i=k. The value of the outlier characteristic r may indicate that the corresponding planetary is deteriorating or experiencing another problem, such as an oil leak. A subsequent, e.g., second, outlier can be found by excluding the planetary corresponding to the first outlier and executing substeps 137A-G modified for fewer planetaries, e.g., seven planetaries.
Although the substeps 137A-F are described herein as an effective approach for identifying an outlier, it is contemplated that other statistical approaches may be employed. In general, to determine whether the planetary is functioning differently from the other planetaries and perhaps malfunctioning, embodiments evaluate the relationship between the temperature measurements corresponding to the single planetary and the measurements corresponding to the other planetaries.
As shown in
Every time a new sample n for planetary temperature Ts is collected, the fit of
t
b
[nT
s
]=t
b[(n−1)Ts]−rw[n]Ts. (13)
When the bushing thickness tb reaches a minimum value, the planetary has reached the end of its operational life. As such, calculating bushing thickness tb indicates the planetary's remaining life and how much use may be further expected from the planetary. Because the thickness of the planetary is not measured either directly or indirectly, the error of the estimated remaining thickness grows exponentially with time. The sources of error may include error in the temperature measurement, error in the estimation of the bushing temperature, error of the fit approximation, including variance of the fit, and the approximation errors corresponding to the determination of the wear ratio r, or the remaining bushing thickness tb. Nevertheless, step 138 provides a useful estimate for the planetary's remaining life.
Referring again to
Mathematically, the forward phase is the dot product of the input vector and the weight vector. Specifically, the input vector P is defined as follows:
where T represents the planetary temperature, S represents the speed, t represents the current time, and d represents the number of delayed sensor values the network accepts as input. The network's temperature prediction for time t is expressed as:
The neural network employs “gradient descent” learning with a momentum term to perform its adaptation. Training must be conducted at every time step. However, a minimum square error (MSE) threshold may be set such that if the network prediction's MSE is lower than the threshold, training may be skipped for the current time step. At each time step, the raw prediction error is the difference between the prediction and actual value:
δ(t)=T(t)−Tp(t). (16)
The weight change vector, which is added to the current weight vector to get the updated weights, is calculated as follows:
where β is the momentum term and α is the learning rate.
When performing a 5-minute future prediction, for example, beginning at time tp, the following input vector P is used:
In effect, the network becomes recurrent, feeding itself input rather than taking input from sensors. Since there is no speed prediction, speed is held constant. Another option is to utilize speed values occurring between successive temperature values, as speed tends to update more quickly.
To demonstrate the success of short-term prediction according to the approach above and to attribute confidence levels to predictions made for different lengths (horizons), experiments were conducted to make predictions were made for eight planetary gears over six missions in the field and for horizons in the range of 2 to 20 minutes. Each experiment included 4 trials, so that the data sets used to extract probability density functions each consisted of approximately 54,000 points. A normal PDF (normal) and at Location-Scale PDF (t-scale) were fitted to the error data for each horizon.
As
Estimating future temperature from its past values and incomplete knowledge of the context in the manner taught herein can be applied to other heat generation processes. Indeed, the unique feature of the neural network employed by the present invention, for example, is its structural simplicity and a specially-tailored learning method.
In sum, the component algorithm processing steps 130 shown in
As further shown in
Finally, step 154 converts the outputs of the logic to messages are easy to understand when communicated via a user interface to operators, or other individuals, so that the appropriate response to planetary health can be made. For example, driver outputs may be color-coded as follows:
Aspects of a planetary diagnostic-prognostic system (PDPS) are described in detail above to demonstrate, by way of example, aspects of the present invention. The present invention is not limited to wheel planetaries of LAV's. Indeed, other power transmission devices, such as differentials, can be readily analyzed using the systems and methods described herein with almost no modification. In general, embodiments may be employed to evaluate the health of any component of an electromechanical device, for example. In particular, to provide a context-independent approach, embodiments may be employed whenever several identical or near-identical systems are subjected to the similar or substantially similar operational contexts. Additionally, the approaches described herein may be more broadly applied to analyze a fleet where systems in the fleet are essentially subjected to the same conditions.
Aspects of the present invention, for example, may be employed as a part of a system, known as an Asset Health Management (AHM) system. The AHM system can be applied to military and non-military platforms, such as ships, aircraft, and ground vehicles, to enhance command and control effectiveness, improve maintenance and supply logistics, and reduce operations and support costs. Such a system represents a shift from a reactive maintenance philosophy to one of proactive maintenance. With the aspects of the present invention, AHM monitors the current health of the platform, reports operational information to operators and alerts them to abnormal conditions, and provides diagnostic information to platform maintainers. Additionally, AHM includes prognostic (predictive) capabilities to predict when platform components or sub-systems will fail or require maintenance and to calculate the remaining useful life of components. Moreover, AHM gathers data on platform components so that component or sub-system trends and usage patterns can be viewed and analyzed. As described previously, this data can be compared against previous platform data or against a fleet average or baseline. Mathematical or statistical methods can also be applied to the data to, for example, recognize component degradation over time. AHM allows platform maintainers to view on-board data or to transfer it to permanent off-board storage, where it can be accessed even when the platform is unavailable. AHM is also capable of transmitting logistics data to a remote location for use by maintenance and supply systems and to aid in fleet tracking. Logistics data typically includes platform location (e.g., latitude, longitude, heading, speed), state of health (e.g., abnormal condition alerts, diagnostic information), and key operating data (e.g., fuel level, ammunition level).
As shown in
Accordingly, embodiments of the present invention provide an improved system and method that enables constant monitoring and proactive maintenance of components in an asset. Advantageously, the embodiments limit unplanned downtime and improve logistical planning by providing warnings as soon as problems with a component can be detected or predicted. With these warnings, corrective actions can be taken to prevent complete failure of the component and/or to prolong the service life of the electromechanical system. In some cases, because a warning can be provided well before failure, repairs and other corrective actions can be planned and logistical adjustments can be made in advance to minimize the impact of downtime. In other cases, the component has a finite operational life, but early warning enables arrangements to be made to retire and replace the asset.
While various embodiments in accordance with the present invention have been shown and described, it is understood that the invention is not limited thereto. The present invention may be changed, modified and further applied by those skilled in the art. Therefore, this invention is not limited to the detail shown and described previously, but also includes all such changes and modifications.
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.'s N00014-05-1-0708 and N00014-06-1-0998 awarded by the Office of Naval Research.