GEH Statistic
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The GEH Statistic is a
formula In science, a formula is a concise way of expressing information symbolically, as in a mathematical formula or a ''chemical formula''. The informal use of the term ''formula'' in science refers to the general construct of a relationship betwe ...
used in traffic engineering, traffic forecasting, and traffic modelling to compare two sets of
traffic volume Network traffic or data traffic is the amount of data moving across a network at a given point of time. Network data in computer networks is mostly encapsulated in network packets, which provide the load in the network. Network traffic is the main ...
s. The GEH formula gets its name from Geoffrey E. Havers, who invented it in the 1970s while working as a transport planner in
London, England London is the Capital city, capital and List of urban areas in the United Kingdom, largest city of both England and the United Kingdom, with a population of in . London metropolitan area, Its wider metropolitan area is the largest in Wester ...
. Although its mathematical form is similar to a
chi-squared test A chi-squared test (also chi-square or test) is a Statistical hypothesis testing, statistical hypothesis test used in the analysis of contingency tables when the sample sizes are large. In simpler terms, this test is primarily used to examine w ...
, is not a true
statistical test A statistical hypothesis test is a method of statistical inference used to decide whether the data provide sufficient evidence to reject a particular hypothesis. A statistical hypothesis test typically involves a calculation of a test statistic. ...
. Rather, it is an
empirical formula In chemistry, the empirical formula of a chemical compound is the simplest whole number ratio of atoms present in a compound. A simple example of this concept is that the empirical formula of sulfur monoxide, or SO, is simply SO, as is the empir ...
that has proven useful for a variety of traffic analysis purposes. :The formula for the "GEH Statistic" is: :GEH=\sqrt :Where M is the hourly traffic volume from the traffic model (or new count) and C is the real-world hourly traffic count (or the old count) Using the GEH Statistic avoids some pitfalls that occur when using simple
percentage In mathematics, a percentage () is a number or ratio expressed as a fraction (mathematics), fraction of 100. It is often Denotation, denoted using the ''percent sign'' (%), although the abbreviations ''pct.'', ''pct'', and sometimes ''pc'' are ...
s to compare two sets of volumes. This is because the traffic volumes in real-world
transportation system A transport network, or transportation network, is a network or graph in geographic space, describing an infrastructure that permits and constrains movement or flow. Examples include but are not limited to road networks, railways, air routes, ...
s vary over a wide range. For example, the mainline of a
freeway A controlled-access highway is a type of highway that has been designed for high-speed vehicular traffic, with all traffic flow—ingress and egress—regulated. Common English terms are freeway, motorway, and expressway. Other similar terms ...
/
motorway A controlled-access highway is a type of highway that has been designed for high-speed vehicular traffic, with all traffic flow—ingress and egress—regulated. Common English terms are freeway, motorway, and expressway. Other similar terms ...
might carry 5000 vehicles per hour, while one of the on-ramps leading to the freeway might carry only 50
vehicle A vehicle () is a machine designed for self-propulsion, usually to transport people, cargo, or both. The term "vehicle" typically refers to land vehicles such as human-powered land vehicle, human-powered vehicles (e.g. bicycles, tricycles, velo ...
s per hour (in that situation it would not be possible to select a single percentage of variation that is acceptable for both volumes). The GEH statistic reduces this problem; because the GEH statistic is non-linear, a single acceptance threshold based on GEH can be used over a fairly wide range of traffic volumes. The use of GEH as an acceptance criterion for travel demand forecasting models is recognised in the UK
Highways Agency National Highways (NH), formerly Highways England and before that the Highways Agency, is a government-owned company charged with operating, maintaining and improving motorways and major A roads in England. It also sets highways standards u ...
's Design Manual for Roads and Bridges the Wisconsin microsimulation modeling guidelines, the Transport for London Traffic Modelling Guidelines and other references. For traffic modelling work in the "baseline" scenario, a GEH of less than 5.0 is considered a good match between the modelled and observed ''hourly'' volumes (flows of longer or shorter durations should be converted to hourly equivalents to use these thresholds). According to DMRB, 85% of the volumes in a traffic model should have a GEH less than 5.0. GEHs in the range of 5.0 to 10.0 may warrant investigation. If the GEH is greater than 10.0, there is a high probability that there is a problem with either the travel demand model or the data (this could be something as simple as a data entry error, or as complicated as a serious model calibration problem).


Applications

The GEH formula is useful in situations such as the following:NCHRP 765: Analytical Travel Forecasting Approaches for Project-Level Planning and Design, http://onlinepubs.trb.org/onlinepubs/nchrp/nchrp_rpt_765.pdf, retrieved 10-March-2016 * Comparing a set of traffic volumes from manual traffic counts with a set of volumes done at the same locations using automation (e.g. a pneumatic tube
traffic counter A traffic count is a count of vehicular or pedestrian traffic, which is conducted along a particular road, path, or Intersection (road), intersection. A traffic count is commonly undertaken either automatically (with the installation of a tempor ...
is used to check the total entering volumes at an intersection to affirm the work done by technicians doing a manual count of the turn volumes). * Comparing the traffic volumes obtained from this year's traffic counts with a group of counts done at the same locations in a previous year. * Comparing the traffic volumes obtained from a travel demand forecasting model (for the "base year" scenario) with the real-world traffic volumes. * Adjusting traffic volume data collected at different times to create a mathematically consistent data set that can be used as input for travel demand forecasting models or traffic simulation models (as discussed in NCHRP 765).


Common criticism about GEH statistic

The GEH statistic depends on the magnitude of the values. Thus, the GEH statistic of two counts of different duration (e.g., daily vs. hourly values) cannot be directly compared. Therefore, GEH statistic is not suitable for evaluating other indicators, e.g., trip distance.Markus Friedrich, Eric Pestel, Christian Schiller, Robert Simon: Scalable GEH: A Quality Measure for Comparing Observed and Modeled Single Values in a Travel Demand Model Validation. In: Transportation Research Record: Journal of the Transportation Research Board. Issue 2673, No 4, April 2019, , pages 722–732, Deviations are evaluated differently upward or downward, so the calculation is not symmetrical. Moreover, the GEH statistic is not without a unit, but has the unit  \sqrt ( s−1/2 in
SI base unit The SI base units are the standard units of measurement defined by the International System of Units (SI) for the seven base quantities of what is now known as the International System of Quantities: they are notably a basic set from which al ...
s). The GEH statistic does not fall within a range of values between 0 (no match) and 1 (perfect match). Thus, the range of values can only be interpreted with sufficient experience (= non-intuitively). Furthermore, it is criticized that the value does not have a well-founded statistical derivation.


Development of the SQV statistic

An alternative measure to the GEH statistic is the Scalable Quality Value (SQV), which solves the above-mentioned problems: It is applicable to various indicators, it is symmetric, it has no units, and it has a range of values between 0 and 1. Moreover, Friedrich et al. derive the relationship between GEH statistic and normal distribution, and thus the relationship between SQV statistic and normal distribution. The SQV statistic is calculated using an empirical formula with a scaling factor f:SQV=\frac


Fields of application

By introducing a scaling factor f, the SQV statistic can be used to evaluate other mobility indicators. The scaling factor f is based on the typical magnitude of the mobility indicator (taking into account the corresponding unit). According to Friedrich et al., the SQV statistic value is suitable for assessing: * Traffic volumes (if necessary, differentiation can be made not only by time of day, but also by mode). * Person-related mobility indicators: ** Number of trips per person (not differentiated or differentiated by mode and / or trip purpose, suggestion: f=1), ** mean travel times per trip in minutes (not differentiated or differentiated by mode and / or trip purpose, proposal: f=30), ** mean travel distances per trip in kilometers (not differentiated or differentiated by mode and / or trip purpose, suggestion: f=10). However, the SQV statistic should not be used for the following indicators: * Percentage of modal split or modal shares: here there is a fixed upper limit of 100% that cannot be exceeded. Instead, the number of trips per person per mode can be used for validation with the SQV statistic. * Travel times for paths between 2 points in the network: This indicator does not depend on the path taken by a single person, but represents a sequence of distances along a route.


Quality categories

Friedrich et al. recommend the following categories: Depending on the indicator under comparison, different quality categories may be required.


Consideration of standard deviation and sample size

The survey of mobility indicators or traffic volumes is often conducted under non-ideal conditions, e.g. large standard deviations or small sample sizes. For these cases, a procedure was described by Friedrich et al. that integrates these two cases into the calculation of the SQV statistic.


See also

*
Microsimulation Microsimulation is the use of computerized analytical tools to perform analysis of activities such as highway traffic flowing through an intersection, financial transactions, or pathogens spreading disease through a population on the granularity ...
*
Traffic counter A traffic count is a count of vehicular or pedestrian traffic, which is conducted along a particular road, path, or Intersection (road), intersection. A traffic count is commonly undertaken either automatically (with the installation of a tempor ...
*
Traffic flow In transportation engineering, traffic flow is the study of interactions between travellers (including pedestrians, cyclists, drivers, and their vehicles) and infrastructure (including highways, signage, and traffic control devices), with the ai ...
*
Traffic engineering (transportation) Traffic engineering is a branch of civil engineering that uses engineering techniques to achieve the safe and efficient movement of people and goods on roadways. It focuses mainly on research for safe and efficient traffic flow, such as road ge ...
*
Transportation planning Transportation planning is the process of defining future policies, goals, investments, and spatial planning designs to prepare for future needs to move people and goods to destinations. As practiced today, it is a collaborative process that i ...
*
Trip generation Trip generation is the first step in the conventional four-step transportation forecasting process used for forecasting travel demands. It predicts the number of trips originating in or destined for a particular traffic analysis zone (TAZ). Trip ...


External links


UK Highways Agency's Design Manual for Roads & Bridges (DMRB)

Wisconsin Microsimulation Modeling Guidelines

Transport for London Traffic Modelling Guidelines

National Cooperative Highway Research Program Report 765


References

{{Reflist Transportation engineering Transportation planning