SIMPLIFIED METHOD FOR PREDICTING AVERAGE SHEAR-WAVE VELOCITY OF GROUND AT STRONG-MOTION STATIONS

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=, (1) Summary. Theory. Introduction

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Transcription:

SIPLIFIED ETHOD FOR PREDICTING AVERAGE SHEAR-WAVE VELOCITY OF GROUND AT STRONG-OTION STATIONS K. Fujimoto and S. idorikawa 2 Lecturer, Dept. of Risk and Crisis anagement System, Chiba Institute of Science, Chiba, Japan ABSTRACT : 2 Professor, Dept. of Built Environment, Tokyo Institute of Technology, Kanagawa, Japan Email: kfujimoto@cis.ac.jp, smidorik@enveng.titech.ac.jp We develop a method for estimating average shear-wave velocity in the upper 3 meters of the ground (V S 3) at a strong-motion station by using recorded motions at a pair of stations located closely each other. For the station pair, an estimate of V S 3 at one of the stations where the soil condition is unknown is derived mainly from V S 3 at another station where the shear-wave velocity data is available and relative amplification factor between the stations. By applying this method to the ground motion records of the, and strong-motion networks in Japan, the V S 3 values are estimated at 26 strong-motion stations throughout Japan. The V S 3 estimated in this study are compared with those inferred from boring data obtained in the vicinity of the station. The result indicates that the method proposed in this study can predict the V S 3 values at a strong-motion station with an accuracy of approximately +/- 5 m/sec. As the additional validation, correlations are examined between the estimated V S 3 and the site classification at the stations, and between the predicted peak ground velocities from the estimated V S 3 and the observed ones for Japanese recent major earthquakes. The results indicate the validity of the estimated V S 3 values. KEYWORDS: average shear-wave velocity, strong-motion station,,,. INTRODUCTION In Japan, nationwide strong-motion seismograph networks, e.g., the and of the National Research Institute for Earth Science and Disaster Prevention (NIED) and the 95-type seismometer network of the Japan eteorological Agency () have been operated. Borehole shear-wave velocity logs are available at all of the and stations while the soil condition at the station is not investigated. Therefore, it is difficult to analyze the strong-motion records obtained at the station considering the local site condition. To classify the local site condition, average shear-wave velocity to a certain depth of the ground has been widely used (Borcherdt, 978). Especially, average shear-wave velocity in the upper 3 meters (V S 3) is mostly in practical use in classification of surface geological unit which is utilized in the National Seismic Hazard apping Project in Japan (Fujiwara et al., 24) and in U.S. building codes (Borcherdt, 994). Value of V S 3 at a site can be computed from geotechnical data, such as velocity logging and boring log, or estimated from microtremor array observation (Konno and Kataoka, 2). However, to obtain these data over a wide area, much time and labor are required because the data necessitate on-site drilling or measurement. The estimate of V S 3 can be also obtained from surface geology in the nationwide geomorphologic database in Japan (Fujimoto and idorikawa, 24; atsuoka et al., 26). Furthermore, Wald and Allen (27) derived the global V S 3 map directly from 3 arc sec topographic data. Since the mesh size used in these studies is about km by km, V S 3 estimates from such mapped geology may differ from actual V S 3 at a site. In this study, we develop a simple method for estimating V S 3 at a strong-motion station mainly derived from peak ground motions recorded at a pair of stations located closely each other. By applying the method to the recordings obtained at the, and networks throughout Japan, V S 3 values at the strong-motion stations are estimated. To examine the estimation accuracy of the V S 3, predicted V S 3 values from the method are compared with those inferred from boring data obtained in the vicinity of the station,

site classification at the station, and seismic ground motion records during recent major earthquakes. 2. ETHOD AND DATASET 2.. ethod We explain a method for estimating V S 3 at a strong-motion station. As illustrated in Figure, for a pair of strong-motion station located closely each other, shear-wave velocity profile is available at one station ( known station ) that is not obtained at another station ( unknown station ). During a certain earthquake, peak ground velocities recorded at known and unknown stations are referred to as PGV k and PGV u, respectively. Peak amplitude ratio corrected by the reciprocal ratio of hypocentral distances for the station pair provides a relative amplification factor (AF ). AF = (PGV u /PGV k )(X u /X k ) (2.) where X k and X u are the distances from an hypocenter to known and unknown stations, respectively. Fujimoto and idorikawa (26) showed seismic site amplification factor (AF) decreases with an increase in V S 3 with slope b on average based on the ground motion records and V S 3 measurements at the and. Therefore, V S 3 value at unknown station (V S 3 u ) can be expressed by Eqn. 2.2. log V S 3 u = log V S 3 k + logaf /b (2.2) where V S 3 k is average shear-wave velocity at known station computed from measured shear-wave velocity profile. Thus, we can obtain V S 3 estimate at a strong-motion station not having shear-wave velocity data by substituting AF, V S 3 k, and b into Eqn. 2.2. Nearby station pair PGV k PGV u AF = ( PGVu PGVk ) ( X u X k ) AF Known station V s (m) 2 4 6 V s (m) 2 4 6 Unknown station AF b Depth (m) - -2 Depth (m) - -2? X u. -3 V S 3 k -3 V S 3 u X k Hypocenter V S 3 u V S 3 k V S 3 Figure Schematic diagram of prediction method 2.2. Dataset and are the nationwide strong-motion seismograph networks consisted of, and 495 stations with a spacing of 25 km averagely. Japan eteorological Agency () also has nationwide strong-motion network consisted of 62 stations. Combination of these strong-motion networks offers the opportunity to pair nearby strong-motion stations. Borehole shear-wave velocity data is available at all of the and stations however that is not investigated at the station. Thus, we adopt the and stations as the known station and the station as the unknown station in this study. We can compute V S 3 values at 758 known stations and use these values as V S 3 k. Figure 2 shows the location of the and stations (known station) by closed circles.

Figure 2 Location of, and stations To pair the station (unknown station) with the or stations (known stations), station-to-station distances between the station and both the and stations are calculated, and then each station is paired with one of the nearest or station. Since the propagation path effect is considered to be not negligible for station distance greater than about 3 km (Borcherdt, 22), the station pair with station distance of more than 3 km are excluded. Consequently, 339 known-unknown station pairs are made. For the station pairs, ground motion records of the earthquakes occurred up until December, 23 with peak ground accelerations of less than gals are collected. Common recordings obtained at both the known and unknown stations are necessary to compute AF value however such records are not available at 57 station pairs. Therefore, 282 station pairs are used in the subsequent analysis. The location of the paired stations is shown by open circles in Figure 2. A histogram showing the number of common recordings obtained at a total of 282 known-unknown pairs is shown in Figure 3. Station pairs with common records less than 2 and 5 earthquakes account for about 4% and 8% of the total pairs, respectively. Figure 4 shows the histogram of the distance between the known and unknown stations. The number of station pairs tends to increase as the station pair distance becomes shorter. Station pair distance less than 5 km makes up about 3% of the total pairs. 7 6 8 5 4 6 3 4 2 2 2 3 4 5 6 5 5 5 5 5 5 2 2 25 25 3 Number of common recordings Station pair distance(km) Figure 3 Histogram of number of common records Figure 4 Histogram of station pair distance

3. ESTIATES OF Vs3 AT STATIONS For the 282 known-unknown station pairs, relative amplification factors (AF ) are calculated by substituting peak ground velocities (PGV) and hypocentral distances into Eqn. 2.. The PGV is adopted as the ground motion parameter in Eqn. 2. because this parameter shows better correlation with V S 3 than does PGA (Fujimoto and idorikawa, 26). Value of AF is defined as the largest value of the corresponding quantity computed from the two horizontal components obtained at each station pair. Substituting the AF together with average shear-wave velocity at known station (V S 3 k ) and average value of slope b specified as -.852 (Fujimoto and idorikawa, 26) into Eqn. 2.2, we obtain the V S 3 estimate at the stations. Figure 5 shows the correlation between the estimated V S 3 and magnitude () for each paired station. The estimated V S 3 remains relatively constant at most of the stations however a large scatter of the V S 3 is found at the paired station with the recordings from the earthquake of magnitudes 5. or less, e.g., the Urakawa [D62], Kuki [5E] and Yonago [EA]. The PGV which is used to compute the AF correlates better with ground motion over a mid-period range (.5-2. sec) (Kobayashi and Nagahashi, 973), however mid-period motions are less dominant in the records from the earthquakes with smaller magnitude than are short-period motion. Therefore, the variance of AF may increase as magnitude of the earthquake becomes smaller. Consequently, Value of V S 3 u are estimated by substituting the AF computed from records with >5. into Eqn. 2.2. Figure 6 shows the distribution of predicted V S 3 values at 26 stations. For reference, average V S 3 values computed from the records with >5. are shown by dotted line in Figure 5. As shown in Figure 6, many of low V S 3 stations are located on alluvial plain such as Kanto and Osaka Plains. Figure 7 presents the histogram of V S 3 estimates. Predicted V S 3 reaches a peak around 2 m/sec, ranging widely from m/sec of very soft soil to more than 6 m/sec of engineering bedrock. Chikusei 9 - IBR8 Urakawa Sawara D62 - HDKH7 52 - CHB4 Narita 52 - CHB4 Kashima 8FD - CHB4 V S 3 u (m/s) ito E2D - IBR6 Kuki Yonago 5E - SIT8 EA - SNH 3 Betsukai 83F - NRH4 Bandou 55 - SIT8 V S 3 u (m/s) Namie 8B4 - FKSH9 ashiko 92 - TCG3 Sakaiminato E9E - SNH Tochigi 58 - TCG Tako 99 - CHB4 V S 3 u (m/s) Figure 5 Correlation between V S 3 and magnitude

V S 3 (m/s) ountain Hill/Plateau Lowland Figure 6 Distribution of V S 3 estimate at stations (left: national map, upper right: Kanto area map, lower right: Hanshin-Chukyo area map) 8 7 6 5 4 3 2 2 2 3 3 4 4 5 5 6 6 Vs3u (m/s) Figure 7 Histogram of V S 3 estimate at stations 4. COPARISON BETWEEN ESTIATED AND OBSERVED V S 3 To examine the estimation accuracy of V S 3, boring logs with SPT N-value obtained in the vicinity of the stations are compiled from several sources. We use 3 boring data that satisfies the following conditions: ) drilling depth is 3 meters or more, 2) distance between the station and borehole site is within 2 meters, 3) both the station and borehole site are located on the same geomorphological unit. V S 3 values at the 3 boring sites near the station are computed based on the shear-wave velocity model estimated from N-value and depth using the empirical equation (Ohta and Goto, 978). Figure 8 shows a comparison of the V S 3 between the values predicted from the station-pair method and those estimated from adjacent boring data. The agreement between the predicted and estimated V S 3 is excellent. This result indicates that the method developed herein can predict the V S 3 at a strong-motion station with an accuracy of approximately +/- 5 m/sec.

To examine the applicability of the station-pair method for velocity range more than 3 m/sec, we compare the predicted V S 3 with site classifications at each station. Site class at the station was investigated (Yoshida and Katsumata, 972), and each station was classified into four categories: ) rock, 2) stiff soil, 3) soft soil, and 4) very soft soil. Figure 9 shows the histogram of the V S 3 for each site class. There appears to be a significant shift toward higher velocities as the site class becomes stiffer however relatively low velocites of less than 4 m/sec are seen at rock site. Several of the low V S 3 sites are located on weathered rock. Thus, underestimate of V S 3 at rock site may come from the overestimation of AF due to the ground motion amplification from the low-velocity weathered layer. To provide more rigorous validation for the station-pair method, we compare the predicted peak ground velocities with observeations during recent large earthquakes. We compute peak ground velocity (PGV) at the station by multiplying the seismic site amplification converted from the estimated V S 3 using empirical equation (Fujimoto and idorikawa, 26) and the peak velocity on engineering bedrock predicted from attenuation relationship (idorikawa and Ohtake, 24). Correlation between the predicted and observed PGV at the station is shown by closed circle in Figure. Likewise, the correlations for the and stations are presented by open square and opne triangle, respectively. There is a good agreement between the predicted and observed PGV however the predicted values are underestimated for several earthquakes such as Eq. 2, 3, 4, and 8. As shown in Figure 2, these earthquakes were occurred in the north-east part of Japan, where the anomalous seismic intensity of subduction zone has been observed. This probably affects that the observed PGV show higher value compared to predicted one. Figure shows the logarithmic standard deviations for the ratio of predicted and observed PGV. The standard deviation of the station (closed circle) ranges.2-.3, that is almost the same with those of the (open rectangle) and (open triangle). V S 3 (m/s) [Adjacent Boring] 4 3 2 +5m/s -5m/s 2 3 4 V S 3 (m/s) [Station-Pair ethod] Figure 8 Comparion of V S 3 5 4 3 Very soft soil Soft soil Stiff soil Rock 2 2 2 3 3 4 4 5 5 6 6 7 7 8 Vs3 (m/s)

Figure 9 Histogram of V S 3 for each site class PGV(cm/s)[pre].Niigata-ken-Chuetsu 2.Kushiro-Oki 3.Nemuro-Hanto-Nanto-Oki 24//23 7:56 ( W 6.6) 24//29 3:32 ( W 7.) 24/2/6 23:5 ( W 6.7) 4.Kushiro-Oki 25//8 23:9 ( W 6.2) 5.Fukuoka-Ken-Seiho-Oki 25/3/2 :53 ( W 6.6) PGV(cm/s)[pre] 6.Chiba-Ken-Hokutobu 25/4/ 7:22 ( W 6.) 7.Chiba-Ken-Hokuseibu 8.iyagi-Ken-Oki 25/7/23 6:35 ( W 5.9) 25/8/6 :46 ( W 7.) 9.Noto-Hanto 27/3/25 9:42 ( W 6.7) PGV(cm/s)[obs] PGV(cm/s)[obs] PGV(cm/s)[obs] Figure Comparison of PGV PGV(cm/s)[obs] logarithmic standard deviation.5.4.3.2.. K NET KiK net 24//23 24//29 24/2/6 25//8 25/3/2 25/4/ 25/7/23 25/8/6 27/3/25 Figure Comparison of logarithmic standard deviation 5. CONCLUSIONS We develop a simple method for estimating average shear-wave velocity in the upper 3 meters of the ground (V S 3) at a strong-motion station by using recorded motions at a pair of stations located closely each other. For the station pair, an estimate of V S 3 at one of the stations where the soil condition is unknown is derived mainly from V S 3 at another station where the shear-wave velocity data is available and relative amplification factor between the stations. By applying this method to the ground motion records of the, and strong-motion networks in Japan, the V S 3 values are estimated at stations. The estimated V S 3 remains relatively constant at most of the stations however a large scatter of V S 3 are found in some cases when using the recorded motions of magnitudes 5. or less. Therefore, using only the records of magnitude more than 5., the V S 3 values are recalculated at the 26 stations throughout Japan.

The V S 3 estimated in this study are compared with those inferred from boring data obtained in the vicinity of the station. The result indicates that the method proposed in this study can predict the V S 3 values at a strong-motion station with an accuracy of approximately +/- 5 m/sec. Relationship between V S 3 and four site classes such as rock, stiff soil, soft soil and very soft soil at each station are examined. The resuts shows that there appears to be a significant shift toward higher velocities as the site class becomes stiffer. By multiplying seismic site amplification factors converted from the V S 3 estimated in this study and peak velocities on engineering bedrock predicted from attenuation relationship, peak ground velocities are computed. Compared with observed peak ground velocities for recent major nine earthquakes occurred in Japan, the computations show good agreement with observations. REFERENCES Borcherdt, R.D., Gibbs, J.F., and Fumal, T.E. (978). Progress on ground motion predictions for the San Francisco Bay region, California, Proc. of the 2nd International Conf. on icrozonation,, 24-253. Borcherdt, R.D. (994). Estimates of site-dependent response spectra for design (ethodology and Justification), Earthquake Spectra,, 67-653. Borcherdt, R.D. (22). Empirical evidence for acceleration-dependent amplification factors, Bull. Seism. Soc. Am., 82:2, 63-64. Fujimoto, K. and idorikawa, S. (24). Prediction of average shear-wave velocity for ground shaking mapping using the Digital National Land Information of Japan, Proc. of the 3th World Conf. on Earthquake Engineering, Paper No.7. Fujimoto, K. and idorikawa, S. (26). Empirical estimates of site amplification factor from strong-motion records at nearby station pairs, Proc. of the st European Conf. on Earthquake Engineering and Seismology, ID No. 25. Fujiwara, H., Aoi, S., Kawai, S., Senna, S., Ishii, T., Okumura, T., and Hayakawa, Y. (24). Outline of strong-motion evaluation in National Seismic Hazard apping Project of Japan, Journal of Japan Association for Earthquake Engineering, 4:3, 5-6. Kobayashi, H. and Nagahashi, S. (973). Evaluation of earthquake effects on the deformation of multi-storied buildings by ground motion amplitudes, Trans of A.I.J., 2, -22. (in Japanese with English abstract) Konno, K. and Kataoka, S. (2). New ethod for Estimating The Average S-Wave Velocity of The Ground, Proc. of the 6th International Conf. on Seismic Zonation. atsuoka,., Wakamatsu, K., Fujimoto, K., and idorikawa, S. (26). Average Shear-wave Velocity apping Using Japan Engineering Geomorphologic Classification ap, Journal of Structural Engineering and Earthquake Engineering, Japan Society of Civil Engineers, 23:, 57s-68s. idorikawa, S. and Ohtake, Y. (24). Variance of peak ground acceleration and velocity in attenuation relationships, Proc. of the 3th World Conf. on Earthquake Engineering, Paper No.325. Ohta, Y. and Goto, N. (978). Physical background of the statistically obtained S wave velocity equation in terms of soil indexes, Butsuri-Tanko (Geophysical Exploration), 3:, 8-7. (in Japanese with English abstract) Yoshida, H. and Katsumata,. (972). Ground conditions of seismological stations in J..A. network, Quarterly journal of seismology, 37:3, pp.3-5. (in Japanese) Wald, D.J. and Allen, T.I. (27). Topographic slope as a proxy for seismic site conditions and amplication, Bull. Seism. Soc. Am., 97:5, 379-395.