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Development of a meteorological forecast for snow accumulation on transmission lines

Published online by Cambridge University Press:  20 January 2017

Tatsuhito Ito
Affiliation:
Hokkaido Electric Power Co., Inc., Sapporo, Japan
Masaru Yamaoka
Affiliation:
Hokkaido Electric Power Co., Inc., Sapporo, Japan
Hisayuki Ohura
Affiliation:
Hokkaido Electric Power Co., Inc., Sapporo, Japan
Takashi Taniguchi
Affiliation:
Hokkaido Head Office of Japan Weather Association, Sapporo, Japan
Gorow Wakahama
Affiliation:
Institute of Low Temperature Science, Hokkaido University, Sapporo 060, Japan
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Abstract

In Hokkaido we have often experienced hazardous accidents, such as tower collapses and conductor breakage, caused by wet-snow accretion on transmission lines, and over many years have developed countermeasures for wet-snow accretion. Recently we have been developing a system to forecast areas where snow accretion may occur. We used the southern part of Hokkaido, divided into 5 km × 5 km meshes, as a forecast area; our predictions were hourly, 3–24 hours in advance. A method of predicting meteorological data which forms an important part of the system predicts three elements which influence wet-snow accretion: air temperature, precipitation, and wind direction and speed. We used an interpolation for predicting temperature and precipitation and a one-level, mesoscale model for diagnosing surface winds for wind direction and speed. By applying the method to many examples of wet-snow accretion, we checked the prediction of weather elements.

Type
Research Article
Copyright
Copyright © International Glaciological Society 1993

Introduction

The Hokkaido Electric Power Co., Inc. is responsible for electric power supply in Hokkaido. The winter climate in Hokkaido is very severe and in the past depressions have sometimes brought wet snow accretion, galloping on transmission lines, or tower collapse due to breakage of wires. To cope with these problems, we began studying countermeasures for snow accretion on transmission lines and developed snow-resistant rings and anti-torsional dampers.

We also utilize meteorological information offered by the Japan Meteorological Agency (JMA). For the purpose of maintening electric power equipment and electric power systems, we have been studying meteorological prediction and developing a system to forecast areas where snow accretion may occur.

Snow accumulates on transmission lines when meteorological elements — air temperature, precipitation and wind — combine within a certain range. Therefore it is necessary to predict these meteorological elements in order to forecast snow accretion.

This paper mainly describes the method of predicting meteorological data which forms part of the snow-accretion forecasting system.

Outline of Snow-Accretion Forecasting System

In winter, when a growing depression approaches Hokkaido and the weather conditions develop into a certain range, wet-snow accretion occurs on transmission lines. It would be very useful for operators of electric power systems and staff of maintenance offices to be able to forecast areas where snow accretion may occur in time to take appropriate countermeasures.

Figure 1 shows the configuration of the snow-accretion forecasting system. The kinds of data used are: (1) predicted values based on meteorological information (air temperature, precipitation, wind direction and speed, etc.) which are available from the JMA and the JWA (Japan Weather Association); (2) the data from climatological station on some pylons; and (3) experiential knowledge of snow accretion in the past.

Fig. 1. Configuration of snow accretion forecasting.

Method of Predicting Meteorological Elements

Meteorological factors related to snow accretion on transmission lines are air temperature, wind direction and speed, and precipitation (primarily wet snow). We used meteorological information received from the JMA and the JWA to produce the “nowcast” (several hours ahead) and the short-range forecast (a day ahead). The area that we used in forecasting was the southern part of Hokkaido where there is sometimes damage due to wet-snow accretion on transmission lines. The area was divided into 5 km × 5 km meshes.

Technique of Predicting Temperature

The flow-chart for predicting temperature is shown in Figure 2. First, we transformed the minimum and maximum temperatures in a day and the temperature at midnight, measured at surface meteorological observation stations, to the temperature at AMeDAS point. (AMeDAS is the Automated Meteorological Data Acquisition System developed by the JMA.) At this stage, we used a relational formula obtained by statistical analysis in advance. Next, through a Spline function, we calculated the temperature for every hour using the above temperatures at each AMeDAS point and the current temperature (Fig. 3).

Fig. 2. Flow chart for predicting temperature.

Fig. 3. Interpolating at an AMeDAS point (Hakodate), o, predicted value; - - -, measured value.

We also calculated the temperature lapse rate of elevation for every hour. This rate was obtained from the relationship between temperature and elevation at AMeDAS points, and from the relationship between upper temperature and altitude at 850mb, as shown in Figure 4.

Fig. 4. Temperature lapse rate of elevation.

After that, we transformed temperatures at AMeDAS points to temperatures at sea level by making use of the temperature lapse rate. We calculated the temperature in each mesh through a distance-weighted interpolation method, and retransformed these values to temperatures at the elevation of each mesh.

In calculating the interpolating equation for predicting temperature change, we improved the accuracy of prediction by using values which were measured before prediction. The pattern of temperature change in a day depends on the minimum temperature in the morning or the maximum in the daytime. So, we can obtain more accurate values if we begin the prediction after getting real values.

Although we had upper air data twice a day (0900 and 2100 h), we used the latest values at Sapporo in beginning the prediction.

Technique of Predicting Precipitation

In the nowcast technique we made use of the precipitation nowcast announced by the JMA. First, they make the distribution of precipitation for every hour on a Radar-AMeDAS Composite Chart as the initial value (Fig. 5). This is the 5 km × 5 km mesh distribution of precipitation intensity calculated by values measured with an AMeDAS rain gauge on the ground. Then they forecast precipitation distribution for 3 h ahead by calculating the initial value through a kinematic technique. Additionally, through a numerical model and echo data, they predict whether precipitation in a sector will increase or decrease with a calculated result of atmospheric conditions.

Fig. 5. Radar—AMeDAS Composite Chart.

Using this precipitation nowcast, we obtained the forecasted precipitation data of a 5 km × 5 km mesh 3 h in advance, every hour on the hour.

In the short-range forecast we predicted precipitation at each AMeDAS point by using mean rainfall rate (MRR) which is part of the Guidance in Connection with Precipitation to Weather Forecast announced twice a day by the JMA. MRR, the forecasted mean rainfall rate for every 6 h divided into nine ranks, is sent every 6 h, 9-45 h in advance. Guidance data is divided with cross stripes as in Figure 6.

Fig. 6. MRR (mean rainfall rate) for 3 April 1990: 0–1 mm; 1, l–3 mm; 2, 3–5 mm; 3, 5–7 mm; and 4, 7–9 mm of precipitation.

Figure 7 shows the prediction technique using MRR. We first calculated the correlation between 6 h measured precipitation in each mesh and 6 h measured precipiation at the AMeDAS point in each mesh. In accordance with this relational formula, we calculated predicted precipitation for every 6 h at each AMeDAS point from MRR. Then, using these figures we interpolated predicted precipitation for every hour at each AMeDAS point through a Spline function. We calculated precipitation for every 5 km × 5 km mesh by the distance-weighted interpolation method. As a result we can predict precipitation for every hour, 24 h in advance.

Fig. 7. Flow chart showing short-range forecast of precipitation.

Technique of Predicting Wind Direction and Speed

We used a one-level, mesoscale model (Reference Mass and DempseyMass and Dempsey, 1985) for diagnosing surface winds so that we could obtain an accurate computation of the real wind distribution. Various elements were used as parameters in the model: (1) geostrophic wind; (2) friction between sea and land; (3) decrease of wind speed through ground friction; (4) shift of wind direction between geostrophic wind and surface wind; (5) temperature difference between sea and land; (6) heating and cooling on the ground; (7) distribution of downward motion by land- and sea-breeze circulation or radiation cooling; and (8) upper stratification condition (atmospheric stability).

In order to predict geostrophic wind, we read forecasting values of atmospheric pressure at four points, Sapporo, Aomori, Urakawa and Suttu, 36 h in advance, every 12 h from the JMA numerical weather prediction chart. Using these values, we interpolated atmospheric pressure for every hour at each point through a Spline function so that we could obtain every hour the predicted geostrophic wind by atmospheric pressure field on four points.

For upper air data (height of 1000 mb, 850 mb and 700 mb, temperature of 850 mb and 700 mb) we used the newest value in observed values announced at 0900 and 2100 h by the JMA.

We calculated the difference in temperature between the sea and land by using mean sea and land temperatures in February for the southern part of Hokkaido.

For topographical data we used mean values of elevation in each mesh from the Geographical Survey Institute’s Collection of Digital Geographic Information.

If we calculate wind direction and speed by using these parameters on the three-dimensional topography, the atmosphere is forcibly made to go up and down. As above, adiabatic process occurs, so that the wind flow is controlled and we can obtain the distribution of new wind.

We have presented here our use of a one-level, mesoscale model for diagnosing surface winds, but we also researched the prediction of wind direction and speed using a potential-flow model (Reference Nagasawa, Okamoto, Umeda, Ooishi, Ootaki and ShiozawaNagasawa and others, 1984.)

The Calculation of Predicted Substantial Precipitation

The prediction of substantial precipitation was calculated by the predicted value of temperature, precipitation and wind in each mesh calculated by these predicting techniques. We formed this parameter as an important index to the snow accretion forecast through weather analysis of past snow accretion cases. The prediction of substantial precipitation is defined by

(1)

and

(2)

where In is substantial precipitation, ν is wind speed, u is snow falling speed, and Ig is precipitation on the ground. Generally the falling speed of a snow flake, which is snow at a suitable temperature for snow accretion, is about 1 m sec−1.

Figure 8 shows the calculation method for predicting substantial precipitation by weather elements. There was a difference among areas. We calculated In by using Equations (1) and (2) for a fall speed of 1 msec−1, assuming a suitable temperature (0°~ +2°C) for snow accretion. At other temperatures In would be 0.

Fig. 8. Calculation method of predicting substantial precipitation.

Examples of Predicted Result

By applying the above method to many examples of wet snow accretion, we were able to check the prediction of weather elements. The following were some of many examples of predicted results of temperature, precipitation, wind and substantial precipitation over three hours from 0900 h on 28 December 1991. On that day they gave an advisory on snow accretion, heavy snow, snowstorms, warnings for snowstorm and heavy snow. Snow accretion occurred on the transmission lines. Figure 9a-d represents the measured and the predicted values.

The predicted temperature value is a little higher (+ 2°C) than the measured value (Fig. 9a).

Fig. 9. Measured values for 1100 h on 28 December 1991 and predicted values for 0900 h on the same day. a, temperature; b, precipitation (measured from Radar-AMeDAS composite chart); c, wind; d, substantial precipitation.

Figure 9b shows precipitation. There is a little difference in the spread of rainfall over the area, but the predicted value is mostly close to the measured value.

Figure 9c shows the measured and the predicted values of wind. As the measured value is interpolated from the values of the AMeDAS points, it is the equalized distribution; high wind is rather difficult to calculate in principle. Another reason is that most AMeDAS points are located in low-wind areas and the values are not rectified for each elevation. It is not shown in the figures, but the measured values on some transmission lines are rather closer to the predicted values than the values calculated as the mean values for the meshes.

Figure 9d shows values of substantial precipitation. As the values of predicted substantial precipitation are calculated from weather elements, they have the predicted errors of the elements.

The distribution of substantial precipitation is calculated by discrimination of the suitable temperature for snow accretion. Also, it is calculated by discrimination between precipitation and no precipitation as substantial precipitation is the product of precipitation and wind speed. Consequently the mesh distribution of the substantial precipitation in fields is not always close to the distribution of the predicted value.

Conclusions

A meteorological forecasting method is a necessary part of the snow accretion forecasting system, and the accuracy of the meteorological forecast directly affects that of the system. Therefore we must study more past snow accretion occurrences and predicted results, and then improve the method to increase accuracy.

We plan to classify the snow accretion by a risk scale with meteorological forecasting values and other elements, and hope, in the near future, to complete the system for practical use.

References

Mass, C.F. Dempsey, D.P. 1985 A one–level, mesoscale model for diagnosing surface winds in mountainous and coastal regions. Mon. Weather Rev., 113(7), 12111227.Google Scholar
Nagasawa, S. Okamoto, S. Umeda, S. Ooishi, Y. Ootaki, Α Shiozawa, Κ 1984 Studies on prediction in complex terrain (I). Wind field model. J. Jpn Soc. Air Pollut., 19(2), 149158.Google Scholar
Figure 0

Fig. 1. Configuration of snow accretion forecasting.

Figure 1

Fig. 2. Flow chart for predicting temperature.

Figure 2

Fig. 3. Interpolating at an AMeDAS point (Hakodate), o, predicted value; - - -, measured value.

Figure 3

Fig. 4. Temperature lapse rate of elevation.

Figure 4

Fig. 5. Radar—AMeDAS Composite Chart.

Figure 5

Fig. 6. MRR (mean rainfall rate) for 3 April 1990: 0–1 mm; 1, l–3 mm; 2, 3–5 mm; 3, 5–7 mm; and 4, 7–9 mm of precipitation.

Figure 6

Fig. 7. Flow chart showing short-range forecast of precipitation.

Figure 7

Fig. 8. Calculation method of predicting substantial precipitation.

Figure 8

Fig. 9. Measured values for 1100 h on 28 December 1991 and predicted values for 0900 h on the same day. a, temperature; b, precipitation (measured from Radar-AMeDAS composite chart); c, wind; d, substantial precipitation.